[299] | 1 | // ----------------------------------------------------------------------- |
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| 2 | // cubes.cc: Member functions for the DataArray, Cube and Image classes. |
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| 3 | // ----------------------------------------------------------------------- |
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| 4 | // Copyright (C) 2006, Matthew Whiting, ATNF |
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| 5 | // |
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| 6 | // This program is free software; you can redistribute it and/or modify it |
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| 7 | // under the terms of the GNU General Public License as published by the |
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| 8 | // Free Software Foundation; either version 2 of the License, or (at your |
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| 9 | // option) any later version. |
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| 10 | // |
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| 11 | // Duchamp is distributed in the hope that it will be useful, but WITHOUT |
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| 12 | // ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or |
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| 13 | // FITNESS FOR A PARTICULAR PURPOSE. See the GNU General Public License |
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| 14 | // for more details. |
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| 15 | // |
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| 16 | // You should have received a copy of the GNU General Public License |
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| 17 | // along with Duchamp; if not, write to the Free Software Foundation, |
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| 18 | // Inc., 59 Temple Place, Suite 330, Boston, MA 02111-1307, USA |
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| 19 | // |
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| 20 | // Correspondence concerning Duchamp may be directed to: |
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| 21 | // Internet email: Matthew.Whiting [at] atnf.csiro.au |
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| 22 | // Postal address: Dr. Matthew Whiting |
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| 23 | // Australia Telescope National Facility, CSIRO |
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| 24 | // PO Box 76 |
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| 25 | // Epping NSW 1710 |
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| 26 | // AUSTRALIA |
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| 27 | // ----------------------------------------------------------------------- |
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[136] | 28 | #include <unistd.h> |
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[3] | 29 | #include <iostream> |
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| 30 | #include <iomanip> |
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| 31 | #include <vector> |
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[212] | 32 | #include <algorithm> |
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[3] | 33 | #include <string> |
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[211] | 34 | #include <math.h> |
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[136] | 35 | |
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[394] | 36 | #include <wcslib/wcs.h> |
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[136] | 37 | |
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[393] | 38 | #include <duchamp/pgheader.hh> |
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[263] | 39 | |
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[393] | 40 | #include <duchamp/duchamp.hh> |
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| 41 | #include <duchamp/param.hh> |
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| 42 | #include <duchamp/fitsHeader.hh> |
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| 43 | #include <duchamp/Cubes/cubes.hh> |
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| 44 | #include <duchamp/PixelMap/Voxel.hh> |
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| 45 | #include <duchamp/PixelMap/Object3D.hh> |
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| 46 | #include <duchamp/Detection/detection.hh> |
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| 47 | #include <duchamp/Detection/columns.hh> |
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[582] | 48 | #include <duchamp/Detection/finders.hh> |
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[393] | 49 | #include <duchamp/Utils/utils.hh> |
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[777] | 50 | #include <duchamp/Utils/feedback.hh> |
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[393] | 51 | #include <duchamp/Utils/mycpgplot.hh> |
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| 52 | #include <duchamp/Utils/Statistics.hh> |
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[789] | 53 | #include <duchamp/FitsIO/DuchampBeam.hh> |
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[378] | 54 | |
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[146] | 55 | using namespace mycpgplot; |
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[190] | 56 | using namespace Statistics; |
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[258] | 57 | using namespace PixelInfo; |
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[3] | 58 | |
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[263] | 59 | #ifdef TEST_DEBUG |
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| 60 | const bool TESTING=true; |
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| 61 | #else |
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| 62 | const bool TESTING=false; |
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| 63 | #endif |
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| 64 | |
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[378] | 65 | namespace duchamp |
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| 66 | { |
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[3] | 67 | |
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[378] | 68 | using namespace Column; |
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[220] | 69 | |
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[378] | 70 | /****************************************************************/ |
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| 71 | /////////////////////////////////////////////////// |
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| 72 | //// Functions for DataArray class: |
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| 73 | /////////////////////////////////////////////////// |
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[220] | 74 | |
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[378] | 75 | DataArray::DataArray(){ |
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[528] | 76 | /// Fundamental constructor for DataArray. |
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| 77 | /// Number of dimensions and pixels are set to 0. Nothing else allocated. |
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| 78 | |
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[378] | 79 | this->numDim=0; |
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| 80 | this->numPixels=0; |
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| 81 | this->objectList = new std::vector<Detection>; |
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[443] | 82 | this->axisDimAllocated = false; |
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[444] | 83 | this->arrayAllocated = false; |
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[419] | 84 | } |
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[378] | 85 | //-------------------------------------------------------------------- |
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[139] | 86 | |
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[736] | 87 | DataArray::DataArray(const DataArray &d){ |
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| 88 | operator=(d); |
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| 89 | } |
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| 90 | |
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| 91 | DataArray& DataArray::operator=(const DataArray &d){ |
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[737] | 92 | if(this==&d) return *this; |
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[736] | 93 | this->numDim = d.numDim; |
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[737] | 94 | if(this->axisDimAllocated) delete [] this->axisDim; |
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[736] | 95 | this->axisDimAllocated = d.axisDimAllocated; |
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[737] | 96 | if(this->axisDimAllocated){ |
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| 97 | this->axisDim = new long[this->numDim]; |
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[741] | 98 | for(size_t i=0;i<size_t(this->numDim);i++) this->axisDim[i] = d.axisDim[i]; |
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[737] | 99 | } |
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[736] | 100 | this->numPixels = d.numPixels; |
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[737] | 101 | if(this->arrayAllocated) delete [] this->array; |
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[736] | 102 | this->arrayAllocated = d.arrayAllocated; |
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[737] | 103 | if(this->arrayAllocated) { |
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| 104 | this->array = new float[this->numPixels]; |
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[741] | 105 | for(size_t i=0;i<size_t(this->numPixels);i++) this->array[i] = d.array[i]; |
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[737] | 106 | } |
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[736] | 107 | this->objectList = d.objectList; |
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| 108 | this->par = d.par; |
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| 109 | this->Stats = d.Stats; |
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| 110 | return *this; |
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| 111 | } |
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| 112 | |
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| 113 | |
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[378] | 114 | DataArray::DataArray(short int nDim){ |
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[528] | 115 | /// @details |
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| 116 | /// N-dimensional constructor for DataArray. |
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| 117 | /// Number of dimensions defined, and dimension array allocated. |
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| 118 | /// Number of pixels are set to 0. |
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| 119 | /// \param nDim Number of dimensions. |
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| 120 | |
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[443] | 121 | this->axisDimAllocated = false; |
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[444] | 122 | this->arrayAllocated = false; |
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[443] | 123 | if(nDim>0){ |
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| 124 | this->axisDim = new long[nDim]; |
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| 125 | this->axisDimAllocated = true; |
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| 126 | } |
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[378] | 127 | this->numDim=nDim; |
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| 128 | this->numPixels=0; |
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| 129 | this->objectList = new std::vector<Detection>; |
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[419] | 130 | } |
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[378] | 131 | //-------------------------------------------------------------------- |
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[3] | 132 | |
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[378] | 133 | DataArray::DataArray(short int nDim, long size){ |
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[528] | 134 | /// @details |
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| 135 | /// N-dimensional constructor for DataArray. |
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| 136 | /// Number of dimensions and number of pixels defined. |
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| 137 | /// Arrays allocated based on these values. |
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| 138 | /// \param nDim Number of dimensions. |
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| 139 | /// \param size Number of pixels. |
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| 140 | /// |
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| 141 | /// Note that we can assign values to the dimension array. |
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[378] | 142 | |
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[443] | 143 | this->axisDimAllocated = false; |
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[444] | 144 | this->arrayAllocated = false; |
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[139] | 145 | if(size<0) |
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[378] | 146 | duchampError("DataArray(nDim,size)", |
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| 147 | "Negative size -- could not define DataArray"); |
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| 148 | else if(nDim<0) |
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| 149 | duchampError("DataArray(nDim,size)", |
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| 150 | "Negative number of dimensions: could not define DataArray"); |
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| 151 | else { |
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[443] | 152 | if(size>0){ |
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| 153 | this->array = new float[size]; |
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[444] | 154 | this->arrayAllocated = true; |
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| 155 | } |
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| 156 | this->numPixels = size; |
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| 157 | if(nDim>0){ |
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| 158 | this->axisDim = new long[nDim]; |
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[443] | 159 | this->axisDimAllocated = true; |
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| 160 | } |
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[378] | 161 | this->numDim = nDim; |
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[139] | 162 | } |
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[378] | 163 | this->objectList = new std::vector<Detection>; |
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[3] | 164 | } |
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[378] | 165 | //-------------------------------------------------------------------- |
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[3] | 166 | |
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[378] | 167 | DataArray::DataArray(short int nDim, long *dimensions) |
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| 168 | { |
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[528] | 169 | /// @details |
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| 170 | /// Most robust constructor for DataArray. |
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| 171 | /// Number and sizes of dimensions are defined, and hence the number of |
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| 172 | /// pixels. Arrays allocated based on these values. |
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| 173 | /// \param nDim Number of dimensions. |
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| 174 | /// \param dimensions Array giving sizes of dimensions. |
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| 175 | |
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[443] | 176 | this->axisDimAllocated = false; |
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[444] | 177 | this->arrayAllocated = false; |
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[378] | 178 | if(nDim<0) |
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| 179 | duchampError("DataArray(nDim,dimArray)", |
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| 180 | "Negative number of dimensions: could not define DataArray"); |
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| 181 | else { |
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| 182 | int size = dimensions[0]; |
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| 183 | for(int i=1;i<nDim;i++) size *= dimensions[i]; |
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| 184 | if(size<0) |
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| 185 | duchampError("DataArray(nDim,dimArray)", |
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| 186 | "Negative size: could not define DataArray"); |
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| 187 | else{ |
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| 188 | this->numPixels = size; |
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[443] | 189 | if(size>0){ |
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| 190 | this->array = new float[size]; |
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[444] | 191 | this->arrayAllocated = true; |
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| 192 | } |
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| 193 | this->numDim=nDim; |
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| 194 | if(nDim>0){ |
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| 195 | this->axisDim = new long[nDim]; |
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[443] | 196 | this->axisDimAllocated = true; |
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| 197 | } |
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[378] | 198 | for(int i=0;i<nDim;i++) this->axisDim[i] = dimensions[i]; |
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| 199 | } |
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| 200 | } |
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| 201 | } |
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| 202 | //-------------------------------------------------------------------- |
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[137] | 203 | |
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[378] | 204 | DataArray::~DataArray() |
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| 205 | { |
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[528] | 206 | /// @details |
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| 207 | /// Destructor -- arrays deleted if they have been allocated, and the |
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| 208 | /// object list is deleted. |
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| 209 | |
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[444] | 210 | if(this->numPixels>0 && this->arrayAllocated){ |
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| 211 | delete [] this->array; |
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| 212 | this->arrayAllocated = false; |
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| 213 | } |
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[443] | 214 | if(this->numDim>0 && this->axisDimAllocated){ |
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| 215 | delete [] this->axisDim; |
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[468] | 216 | this->axisDimAllocated = false; |
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[443] | 217 | } |
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[378] | 218 | delete this->objectList; |
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| 219 | } |
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| 220 | //-------------------------------------------------------------------- |
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| 221 | //-------------------------------------------------------------------- |
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[220] | 222 | |
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[528] | 223 | void DataArray::getDim(long &x, long &y, long &z) |
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| 224 | { |
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| 225 | /// @details |
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| 226 | /// The sizes of the first three dimensions (if they exist) are returned. |
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| 227 | /// \param x The first dimension. Defaults to 0 if numDim \f$\le\f$ 0. |
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| 228 | /// \param y The second dimension. Defaults to 1 if numDim \f$\le\f$ 1. |
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| 229 | /// \param z The third dimension. Defaults to 1 if numDim \f$\le\f$ 2. |
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| 230 | |
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[378] | 231 | if(this->numDim>0) x=this->axisDim[0]; |
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| 232 | else x=0; |
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| 233 | if(this->numDim>1) y=this->axisDim[1]; |
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| 234 | else y=1; |
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| 235 | if(this->numDim>2) z=this->axisDim[2]; |
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| 236 | else z=1; |
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| 237 | } |
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| 238 | //-------------------------------------------------------------------- |
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[3] | 239 | |
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[528] | 240 | void DataArray::getDimArray(long *output) |
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| 241 | { |
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| 242 | /// @details |
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| 243 | /// The axisDim array is written to output. This needs to be defined |
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| 244 | /// beforehand: no checking is done on the memory. |
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| 245 | /// \param output The array that is written to. |
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| 246 | |
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[378] | 247 | for(int i=0;i<this->numDim;i++) output[i] = this->axisDim[i]; |
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| 248 | } |
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| 249 | //-------------------------------------------------------------------- |
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[3] | 250 | |
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[528] | 251 | void DataArray::getArray(float *output) |
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| 252 | { |
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| 253 | /// @details |
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| 254 | /// The pixel value array is written to output. This needs to be defined |
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| 255 | /// beforehand: no checking is done on the memory. |
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| 256 | /// \param output The array that is written to. |
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| 257 | |
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[378] | 258 | for(int i=0;i<this->numPixels;i++) output[i] = this->array[i]; |
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[139] | 259 | } |
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[378] | 260 | //-------------------------------------------------------------------- |
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[3] | 261 | |
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[528] | 262 | void DataArray::saveArray(float *input, long size) |
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| 263 | { |
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| 264 | /// @details |
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| 265 | /// Saves the array in input to the pixel array DataArray::array. |
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| 266 | /// The size of the array given must be the same as the current number of |
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| 267 | /// pixels, else an error message is returned and nothing is done. |
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| 268 | /// \param input The array of values to be saved. |
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| 269 | /// \param size The size of input. |
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| 270 | |
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[378] | 271 | if(size != this->numPixels) |
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| 272 | duchampError("DataArray::saveArray", |
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| 273 | "Input array different size to existing array. Cannot save."); |
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| 274 | else { |
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[444] | 275 | if(this->numPixels>0 && this->arrayAllocated) delete [] this->array; |
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[378] | 276 | this->numPixels = size; |
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| 277 | this->array = new float[size]; |
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[444] | 278 | this->arrayAllocated = true; |
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[378] | 279 | for(int i=0;i<size;i++) this->array[i] = input[i]; |
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| 280 | } |
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| 281 | } |
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| 282 | //-------------------------------------------------------------------- |
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[3] | 283 | |
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[528] | 284 | void DataArray::addObject(Detection object) |
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| 285 | { |
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| 286 | /// \param object The object to be added to the object list. |
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| 287 | |
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[378] | 288 | // objectList is a vector, so just use push_back() |
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| 289 | this->objectList->push_back(object); |
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| 290 | } |
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| 291 | //-------------------------------------------------------------------- |
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[3] | 292 | |
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[528] | 293 | void DataArray::addObjectList(std::vector <Detection> newlist) |
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| 294 | { |
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| 295 | /// \param newlist The list of objects to be added to the object list. |
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| 296 | |
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[623] | 297 | std::vector<Detection>::iterator obj; |
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| 298 | for(obj=newlist.begin();obj<newlist.end();obj++) this->objectList->push_back(*obj); |
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[378] | 299 | } |
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| 300 | //-------------------------------------------------------------------- |
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[3] | 301 | |
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[528] | 302 | bool DataArray::isDetection(float value) |
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| 303 | { |
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| 304 | /// @details |
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| 305 | /// Is a given value a detection, based on the statistics in the |
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| 306 | /// DataArray's StatsContainer? |
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| 307 | /// \param value The pixel value to test. |
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| 308 | |
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[378] | 309 | if(par.isBlank(value)) return false; |
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| 310 | else return Stats.isDetection(value); |
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[419] | 311 | } |
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[378] | 312 | //-------------------------------------------------------------------- |
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[220] | 313 | |
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[528] | 314 | bool DataArray::isDetection(long voxel) |
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| 315 | { |
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| 316 | /// @details |
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| 317 | /// Is a given pixel a detection, based on the statistics in the |
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| 318 | /// DataArray's StatsContainer? |
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| 319 | /// If the pixel lies outside the valid range for the data array, return false. |
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| 320 | /// \param voxel Location of the DataArray's pixel to be tested. |
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| 321 | |
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[378] | 322 | if((voxel<0)||(voxel>this->numPixels)) return false; |
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| 323 | else if(par.isBlank(this->array[voxel])) return false; |
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| 324 | else return Stats.isDetection(this->array[voxel]); |
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[419] | 325 | } |
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[378] | 326 | //-------------------------------------------------------------------- |
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| 327 | |
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| 328 | std::ostream& operator<< ( std::ostream& theStream, DataArray &array) |
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| 329 | { |
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[528] | 330 | /// @details |
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| 331 | /// A way to print out the pixel coordinates & flux values of the |
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| 332 | /// list of detected objects belonging to the DataArray. |
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| 333 | /// These are formatted nicely according to the << operator for Detection, |
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| 334 | /// with a line indicating the number of detections at the start. |
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| 335 | /// \param theStream The ostream object to which the output should be sent. |
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| 336 | /// \param array The DataArray containing the list of objects. |
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| 337 | |
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[378] | 338 | for(int i=0;i<array.numDim;i++){ |
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| 339 | if(i>0) theStream<<"x"; |
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| 340 | theStream<<array.axisDim[i]; |
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| 341 | } |
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| 342 | theStream<<std::endl; |
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[475] | 343 | |
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| 344 | theStream<<"Threshold\tmiddle\tspread\trobust\n" << array.stats().getThreshold() << "\t"; |
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| 345 | if(array.pars().getFlagUserThreshold()) |
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| 346 | theStream << "0.0000\t" << array.stats().getThreshold() << "\t"; |
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| 347 | else |
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| 348 | theStream << array.stats().getMiddle() << " " << array.stats().getSpread() << "\t"; |
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| 349 | theStream << array.stats().getRobust()<<"\n"; |
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| 350 | |
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[378] | 351 | theStream<<array.objectList->size()<<" detections:\n--------------\n"; |
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[623] | 352 | std::vector<Detection>::iterator obj; |
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| 353 | for(obj=array.objectList->begin();obj<array.objectList->end();obj++){ |
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| 354 | theStream << "Detection #" << obj->getID()<<std::endl; |
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| 355 | Detection *newobj = new Detection; |
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| 356 | *newobj = *obj; |
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| 357 | newobj->addOffsets(); |
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| 358 | theStream<<*newobj; |
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| 359 | delete newobj; |
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[378] | 360 | } |
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| 361 | theStream<<"--------------\n"; |
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| 362 | return theStream; |
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[3] | 363 | } |
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| 364 | |
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[378] | 365 | /****************************************************************/ |
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| 366 | ///////////////////////////////////////////////////////////// |
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| 367 | //// Functions for Cube class |
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| 368 | ///////////////////////////////////////////////////////////// |
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[3] | 369 | |
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[528] | 370 | Cube::Cube() |
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| 371 | { |
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| 372 | /// @details |
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| 373 | /// Basic Constructor for Cube class. |
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| 374 | /// numDim set to 3, but numPixels to 0 and all bool flags to false. |
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| 375 | /// No allocation done. |
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| 376 | |
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[220] | 377 | numPixels=0; numDim=3; |
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| 378 | reconExists = false; reconAllocated = false; baselineAllocated = false; |
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[419] | 379 | } |
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[378] | 380 | //-------------------------------------------------------------------- |
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[3] | 381 | |
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[528] | 382 | Cube::Cube(long size) |
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| 383 | { |
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| 384 | /// @details |
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| 385 | /// Alternative Cube constructor, where size is given but not individual |
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| 386 | /// dimensions. Arrays are allocated as appropriate (according to the |
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| 387 | /// relevant flags in Param set), but the Cube::axisDim array is not. |
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| 388 | |
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[378] | 389 | this->reconAllocated = false; |
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| 390 | this->baselineAllocated = false; |
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[443] | 391 | this->axisDimAllocated = false; |
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[444] | 392 | this->arrayAllocated = false; |
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[378] | 393 | this->numPixels = this->numDim = 0; |
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| 394 | if(size<0) |
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| 395 | duchampError("Cube(size)","Negative size -- could not define Cube"); |
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| 396 | else{ |
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| 397 | if(size>0){ |
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| 398 | this->array = new float[size]; |
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[444] | 399 | this->arrayAllocated = true; |
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[378] | 400 | if(this->par.getFlagATrous()||this->par.getFlagSmooth()){ |
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| 401 | this->recon = new float[size]; |
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| 402 | this->reconAllocated = true; |
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| 403 | } |
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| 404 | if(this->par.getFlagBaseline()){ |
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| 405 | this->baseline = new float[size]; |
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| 406 | this->baselineAllocated = true; |
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| 407 | } |
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[219] | 408 | } |
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[378] | 409 | this->numPixels = size; |
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[443] | 410 | this->axisDim = new long[3]; |
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[444] | 411 | this->axisDimAllocated = true; |
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[378] | 412 | this->numDim = 3; |
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| 413 | this->reconExists = false; |
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[139] | 414 | } |
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[3] | 415 | } |
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[378] | 416 | //-------------------------------------------------------------------- |
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[3] | 417 | |
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[528] | 418 | Cube::Cube(long *dimensions) |
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| 419 | { |
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| 420 | /// Alternative Cube constructor, where sizes of dimensions are given. |
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| 421 | /// Arrays are allocated as appropriate (according to the |
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| 422 | /// relevant flags in Param set), as is the Cube::axisDim array. |
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| 423 | |
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[378] | 424 | int size = dimensions[0] * dimensions[1] * dimensions[2]; |
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| 425 | int imsize = dimensions[0] * dimensions[1]; |
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| 426 | this->reconAllocated = false; |
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| 427 | this->baselineAllocated = false; |
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[443] | 428 | this->axisDimAllocated = false; |
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[444] | 429 | this->arrayAllocated = false; |
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[378] | 430 | this->numPixels = this->numDim = 0; |
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| 431 | if((size<0) || (imsize<0) ) |
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| 432 | duchampError("Cube(dimArray)","Negative size -- could not define Cube"); |
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| 433 | else{ |
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| 434 | this->numPixels = size; |
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| 435 | if(size>0){ |
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| 436 | this->array = new float[size]; |
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[502] | 437 | this->arrayAllocated = true; |
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[378] | 438 | this->detectMap = new short[imsize]; |
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| 439 | if(this->par.getFlagATrous()||this->par.getFlagSmooth()){ |
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| 440 | this->recon = new float[size]; |
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| 441 | this->reconAllocated = true; |
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| 442 | } |
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| 443 | if(this->par.getFlagBaseline()){ |
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| 444 | this->baseline = new float[size]; |
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| 445 | this->baselineAllocated = true; |
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| 446 | } |
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[205] | 447 | } |
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[378] | 448 | this->numDim = 3; |
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| 449 | this->axisDim = new long[3]; |
---|
[443] | 450 | this->axisDimAllocated = true; |
---|
[378] | 451 | for(int i=0;i<3 ;i++) this->axisDim[i] = dimensions[i]; |
---|
| 452 | for(int i=0;i<imsize;i++) this->detectMap[i] = 0; |
---|
| 453 | this->reconExists = false; |
---|
[139] | 454 | } |
---|
[3] | 455 | } |
---|
[378] | 456 | //-------------------------------------------------------------------- |
---|
[3] | 457 | |
---|
[378] | 458 | Cube::~Cube() |
---|
| 459 | { |
---|
[528] | 460 | /// @details |
---|
| 461 | /// The destructor deletes the memory allocated for Cube::detectMap, and, |
---|
| 462 | /// if these have been allocated, Cube::recon and Cube::baseline. |
---|
| 463 | |
---|
[502] | 464 | if(this->numPixels>0 && this->arrayAllocated) delete [] this->detectMap; |
---|
[378] | 465 | if(this->reconAllocated) delete [] this->recon; |
---|
| 466 | if(this->baselineAllocated) delete [] this->baseline; |
---|
| 467 | } |
---|
| 468 | //-------------------------------------------------------------------- |
---|
[137] | 469 | |
---|
[736] | 470 | Cube::Cube(const Cube &c): |
---|
| 471 | DataArray(c) |
---|
| 472 | { |
---|
| 473 | this->operator=(c); |
---|
| 474 | } |
---|
| 475 | |
---|
[737] | 476 | Cube& Cube::operator=(const Cube &c) |
---|
[736] | 477 | { |
---|
[737] | 478 | if(this==&c) return *this; |
---|
[736] | 479 | if(this->arrayAllocated) delete [] this->detectMap; |
---|
[737] | 480 | ((DataArray &) *this) = c; |
---|
| 481 | this->reconExists = c.reconExists; |
---|
| 482 | if(this->reconAllocated) delete [] this->recon; |
---|
| 483 | this->reconAllocated = c.reconAllocated; |
---|
| 484 | if(this->reconAllocated) { |
---|
| 485 | this->recon = new float[this->numPixels]; |
---|
[741] | 486 | for(size_t i=0;i<size_t(this->numPixels);i++) this->recon[i] = c.recon[i]; |
---|
[737] | 487 | } |
---|
| 488 | if(this->arrayAllocated){ |
---|
| 489 | this->detectMap = new short[this->axisDim[0]*this->axisDim[1]]; |
---|
[741] | 490 | for(size_t i=0;i<size_t(this->axisDim[0]*this->axisDim[1]);i++) this->detectMap[i] = c.detectMap[i]; |
---|
[737] | 491 | } |
---|
| 492 | if(this->baselineAllocated) delete [] this->baseline; |
---|
| 493 | this->baselineAllocated = c.baselineAllocated; |
---|
| 494 | if(this->baselineAllocated){ |
---|
| 495 | this->baseline = new float[this->numPixels]; |
---|
[741] | 496 | for(size_t i=0;i<size_t(this->numPixels);i++) this->baseline[i] = c.baseline[i]; |
---|
[737] | 497 | } |
---|
| 498 | this->head = c.head; |
---|
| 499 | this->fullCols = c.fullCols; |
---|
| 500 | this->logCols = c.logCols; |
---|
[736] | 501 | return *this; |
---|
| 502 | } |
---|
| 503 | |
---|
[679] | 504 | OUTCOME Cube::initialiseCube(long *dimensions, bool allocateArrays) |
---|
[378] | 505 | { |
---|
[528] | 506 | /// @details |
---|
| 507 | /// This function will set the sizes of all arrays that will be used by Cube. |
---|
| 508 | /// It will also define the values of the axis dimensions: this will be done |
---|
| 509 | /// using the WCS in the FitsHeader class, so the WCS needs to be good and |
---|
| 510 | /// have three axes. If this is not the case, the axes are assumed to be |
---|
| 511 | /// ordered in the sense of lng,lat,spc. |
---|
| 512 | /// |
---|
| 513 | /// \param dimensions An array of values giving the dimensions (sizes) for |
---|
| 514 | /// all axes. |
---|
| 515 | /// \param allocateArrays A flag indicating whether to allocate |
---|
| 516 | /// the memory for the data arrays: the default is true. The |
---|
| 517 | /// dimension arrays will be allocated and filled. |
---|
[186] | 518 | |
---|
[679] | 519 | int lng,lat,spc; |
---|
| 520 | long size,imsize; |
---|
[365] | 521 | |
---|
[467] | 522 | int numAxes = this->head.getNumAxes(); |
---|
[519] | 523 | if(numAxes<=0) numAxes=3; |
---|
[467] | 524 | |
---|
[477] | 525 | if(this->head.isWCS() && (numAxes>=3) && (this->head.WCS().spec>=0)){ |
---|
[378] | 526 | // if there is a WCS and there is at least 3 axes |
---|
| 527 | lng = this->head.WCS().lng; |
---|
| 528 | lat = this->head.WCS().lat; |
---|
| 529 | spc = this->head.WCS().spec; |
---|
| 530 | } |
---|
| 531 | else{ |
---|
| 532 | // just take dimensions[] at face value |
---|
| 533 | lng = 0; |
---|
| 534 | lat = 1; |
---|
| 535 | spc = 2; |
---|
| 536 | } |
---|
[186] | 537 | |
---|
[378] | 538 | size = dimensions[lng]; |
---|
[467] | 539 | if(numAxes>1) size *= dimensions[lat]; |
---|
| 540 | if(this->head.canUseThirdAxis() && numAxes>spc) size *= dimensions[spc]; |
---|
| 541 | |
---|
[378] | 542 | imsize = dimensions[lng]; |
---|
[467] | 543 | if(numAxes>1) imsize *= dimensions[lat]; |
---|
[271] | 544 | |
---|
[378] | 545 | this->reconAllocated = false; |
---|
| 546 | this->baselineAllocated = false; |
---|
[186] | 547 | |
---|
[443] | 548 | if(this->axisDimAllocated){ |
---|
| 549 | delete [] this->axisDim; |
---|
| 550 | this->axisDimAllocated = false; |
---|
| 551 | } |
---|
| 552 | |
---|
[444] | 553 | if(this->arrayAllocated){ |
---|
| 554 | delete [] this->array; |
---|
[726] | 555 | delete [] this->detectMap; |
---|
[444] | 556 | this->arrayAllocated = false; |
---|
| 557 | } |
---|
[726] | 558 | if(this->reconAllocated){ |
---|
| 559 | delete [] this->recon; |
---|
| 560 | this->reconAllocated = false; |
---|
| 561 | } |
---|
| 562 | if(this->baselineAllocated){ |
---|
| 563 | delete [] this->baseline; |
---|
| 564 | this->baselineAllocated = false; |
---|
| 565 | } |
---|
[444] | 566 | |
---|
[679] | 567 | if((size<0) || (imsize<0) ) { |
---|
[378] | 568 | duchampError("Cube::initialiseCube(dimArray)", |
---|
| 569 | "Negative size -- could not define Cube.\n"); |
---|
[679] | 570 | return FAILURE; |
---|
| 571 | } |
---|
[378] | 572 | else{ |
---|
| 573 | this->numPixels = size; |
---|
[496] | 574 | this->numDim = 3; |
---|
[758] | 575 | |
---|
[496] | 576 | this->axisDim = new long[this->numDim]; |
---|
| 577 | this->axisDimAllocated = true; |
---|
| 578 | this->axisDim[0] = dimensions[lng]; |
---|
| 579 | if(numAxes>1) this->axisDim[1] = dimensions[lat]; |
---|
| 580 | else this->axisDim[1] = 1; |
---|
| 581 | if(this->head.canUseThirdAxis() && numAxes>spc) this->axisDim[2] = dimensions[spc]; |
---|
| 582 | else this->axisDim[2] = 1; |
---|
[758] | 583 | |
---|
[817] | 584 | int numNondegDim=0; |
---|
| 585 | for(int i=0;i<3;i++) if(this->axisDim[i]>1) numNondegDim++; |
---|
| 586 | |
---|
| 587 | if(this->par.getFlagSmooth()){ |
---|
| 588 | if(this->par.getSmoothType()=="spectral" && numNondegDim==2){ |
---|
| 589 | duchampWarning("Cube::initialiseCube", "Spectral smooth requested, but have a 2D image. Setting flagSmooth=false"); |
---|
| 590 | this->par.setFlagSmooth(false); |
---|
| 591 | } |
---|
| 592 | if(this->par.getSmoothType()=="spatial" && numNondegDim==1){ |
---|
| 593 | duchampWarning("Cube::initialiseCube", "Spatial smooth requested, but have a 1D image. Setting flagSmooth=false"); |
---|
| 594 | this->par.setFlagSmooth(false); |
---|
| 595 | } |
---|
| 596 | } |
---|
| 597 | if(this->par.getFlagATrous()){ |
---|
| 598 | for(int d=3; d>=1; d--){ |
---|
| 599 | if(this->par.getReconDim()==d && numNondegDim==(d-1)){ |
---|
| 600 | std::stringstream ss; |
---|
| 601 | ss << d << "D reconstruction requested, but image is " << d-1 <<"D. Setting flagAtrous=false"; |
---|
| 602 | duchampWarning("Cube::initialiseCube", ss.str()); |
---|
| 603 | this->par.setFlagATrous(false); |
---|
| 604 | } |
---|
| 605 | } |
---|
| 606 | } |
---|
| 607 | |
---|
[758] | 608 | if(allocateArrays && this->par.isVerbose()) this->reportMemorySize(std::cout,allocateArrays); |
---|
| 609 | |
---|
[496] | 610 | this->reconExists = false; |
---|
| 611 | if(size>0 && allocateArrays){ |
---|
[378] | 612 | this->array = new float[size]; |
---|
[444] | 613 | this->arrayAllocated = true; |
---|
[378] | 614 | this->detectMap = new short[imsize]; |
---|
[496] | 615 | for(int i=0;i<imsize;i++) this->detectMap[i] = 0; |
---|
[378] | 616 | if(this->par.getFlagATrous() || this->par.getFlagSmooth()){ |
---|
| 617 | this->recon = new float[size]; |
---|
| 618 | this->reconAllocated = true; |
---|
[757] | 619 | for(int i=0;i<size;i++) this->recon[i] = 0.; |
---|
[378] | 620 | } |
---|
| 621 | if(this->par.getFlagBaseline()){ |
---|
| 622 | this->baseline = new float[size]; |
---|
| 623 | this->baselineAllocated = true; |
---|
[757] | 624 | for(int i=0;i<size;i++) this->baseline[i] = 0.; |
---|
[378] | 625 | } |
---|
[205] | 626 | } |
---|
[139] | 627 | } |
---|
[679] | 628 | return SUCCESS; |
---|
[3] | 629 | } |
---|
[378] | 630 | //-------------------------------------------------------------------- |
---|
[3] | 631 | |
---|
[758] | 632 | void Cube::reportMemorySize(std::ostream &theStream, bool allocateArrays) |
---|
| 633 | { |
---|
| 634 | std::string unitlist[4]={"kB","MB","GB","TB"}; |
---|
| 635 | long size=axisDim[0]*axisDim[1]*axisDim[2]; |
---|
| 636 | long imsize=axisDim[0]*axisDim[1]; |
---|
| 637 | |
---|
| 638 | // Calculate and report the total size of memory to be allocated. |
---|
| 639 | float allocSize=3*sizeof(long); // axisDim |
---|
| 640 | float arrAllocSize=0.; |
---|
| 641 | if(size>0 && allocateArrays){ |
---|
| 642 | allocSize += size * sizeof(float); // array |
---|
| 643 | arrAllocSize = size*sizeof(float); |
---|
| 644 | allocSize += imsize * sizeof(short); // detectMap |
---|
| 645 | if(this->par.getFlagATrous() || this->par.getFlagSmooth()) |
---|
| 646 | allocSize += size * sizeof(float); // recon |
---|
| 647 | if(this->par.getFlagBaseline()) |
---|
| 648 | allocSize += size * sizeof(float); // baseline |
---|
| 649 | } |
---|
| 650 | std::string units="bytes"; |
---|
| 651 | for(int i=0;i<4 && allocSize>1024.;i++){ |
---|
| 652 | allocSize/=1024.; |
---|
| 653 | arrAllocSize /= 1024.; |
---|
| 654 | units=unitlist[i]; |
---|
| 655 | } |
---|
| 656 | |
---|
| 657 | theStream << "\n About to allocate " << allocSize << units; |
---|
| 658 | if(arrAllocSize > 0.) theStream << " of which " << arrAllocSize << units << " is for the image\n"; |
---|
| 659 | else theStream << "\n"; |
---|
| 660 | } |
---|
| 661 | |
---|
| 662 | |
---|
[513] | 663 | bool Cube::is2D() |
---|
| 664 | { |
---|
[528] | 665 | /// @details |
---|
| 666 | /// Check whether the image is 2-dimensional, by counting |
---|
| 667 | /// the number of dimensions that are greater than 1 |
---|
| 668 | |
---|
[513] | 669 | if(this->head.WCS().naxis==2) return true; |
---|
| 670 | else{ |
---|
| 671 | int numDim=0; |
---|
| 672 | for(int i=0;i<this->numDim;i++) if(axisDim[i]>1) numDim++; |
---|
| 673 | return numDim<=2; |
---|
| 674 | } |
---|
| 675 | |
---|
| 676 | } |
---|
| 677 | //-------------------------------------------------------------------- |
---|
| 678 | |
---|
[698] | 679 | OUTCOME Cube::getCube() |
---|
[528] | 680 | { |
---|
| 681 | /// @details |
---|
| 682 | /// A front-end to the Cube::getCube() function, that does |
---|
| 683 | /// subsection checks. |
---|
| 684 | /// Assumes the Param is set up properly. |
---|
| 685 | |
---|
[232] | 686 | std::string fname = par.getImageFile(); |
---|
[220] | 687 | if(par.getFlagSubsection()) fname+=par.getSubsection(); |
---|
| 688 | return getCube(fname); |
---|
[419] | 689 | } |
---|
[378] | 690 | //-------------------------------------------------------------------- |
---|
[220] | 691 | |
---|
[528] | 692 | void Cube::saveArray(float *input, long size) |
---|
| 693 | { |
---|
[378] | 694 | if(size != this->numPixels){ |
---|
| 695 | std::stringstream errmsg; |
---|
| 696 | errmsg << "Input array different size to existing array (" |
---|
| 697 | << size << " cf. " << this->numPixels << "). Cannot save.\n"; |
---|
| 698 | duchampError("Cube::saveArray",errmsg.str()); |
---|
| 699 | } |
---|
| 700 | else { |
---|
[444] | 701 | if(this->numPixels>0 && this->arrayAllocated) delete [] array; |
---|
[378] | 702 | this->numPixels = size; |
---|
| 703 | this->array = new float[size]; |
---|
[444] | 704 | this->arrayAllocated = true; |
---|
[378] | 705 | for(int i=0;i<size;i++) this->array[i] = input[i]; |
---|
| 706 | } |
---|
[160] | 707 | } |
---|
[378] | 708 | //-------------------------------------------------------------------- |
---|
[3] | 709 | |
---|
[528] | 710 | void Cube::saveArray(std::vector<float> &input) |
---|
| 711 | { |
---|
| 712 | /// @details |
---|
| 713 | /// Saves the array in input to the pixel array Cube::array. |
---|
| 714 | /// The size of the array given must be the same as the current number of |
---|
| 715 | /// pixels, else an error message is returned and nothing is done. |
---|
| 716 | /// \param input The array of values to be saved. |
---|
| 717 | |
---|
[534] | 718 | if(long(input.size()) != this->numPixels){ |
---|
[491] | 719 | std::stringstream errmsg; |
---|
| 720 | errmsg << "Input array different size to existing array (" |
---|
| 721 | << input.size() << " cf. " << this->numPixels << "). Cannot save.\n"; |
---|
| 722 | duchampError("Cube::saveArray",errmsg.str()); |
---|
| 723 | } |
---|
| 724 | else { |
---|
| 725 | if(this->numPixels>0 && this->arrayAllocated) delete [] this->array; |
---|
| 726 | this->numPixels = input.size(); |
---|
| 727 | this->array = new float[input.size()]; |
---|
| 728 | this->arrayAllocated = true; |
---|
[623] | 729 | for(size_t i=0;i<input.size();i++) this->array[i] = input[i]; |
---|
[491] | 730 | } |
---|
| 731 | } |
---|
| 732 | //-------------------------------------------------------------------- |
---|
| 733 | |
---|
[528] | 734 | void Cube::saveRecon(float *input, long size) |
---|
| 735 | { |
---|
| 736 | /// @details |
---|
| 737 | /// Saves the array in input to the reconstructed array Cube::recon |
---|
| 738 | /// The size of the array given must be the same as the current number of |
---|
| 739 | /// pixels, else an error message is returned and nothing is done. |
---|
| 740 | /// If the recon array has already been allocated, it is deleted first, and |
---|
| 741 | /// then the space is allocated. |
---|
| 742 | /// Afterwards, the appropriate flags are set. |
---|
| 743 | /// \param input The array of values to be saved. |
---|
| 744 | /// \param size The size of input. |
---|
| 745 | |
---|
[378] | 746 | if(size != this->numPixels){ |
---|
| 747 | std::stringstream errmsg; |
---|
| 748 | errmsg << "Input array different size to existing array (" |
---|
| 749 | << size << " cf. " << this->numPixels << "). Cannot save.\n"; |
---|
| 750 | duchampError("Cube::saveRecon",errmsg.str()); |
---|
[205] | 751 | } |
---|
[378] | 752 | else { |
---|
| 753 | if(this->numPixels>0){ |
---|
| 754 | if(this->reconAllocated) delete [] this->recon; |
---|
| 755 | this->numPixels = size; |
---|
| 756 | this->recon = new float[size]; |
---|
| 757 | this->reconAllocated = true; |
---|
| 758 | for(int i=0;i<size;i++) this->recon[i] = input[i]; |
---|
| 759 | this->reconExists = true; |
---|
| 760 | } |
---|
| 761 | } |
---|
[139] | 762 | } |
---|
[378] | 763 | //-------------------------------------------------------------------- |
---|
[3] | 764 | |
---|
[528] | 765 | void Cube::getRecon(float *output) |
---|
| 766 | { |
---|
| 767 | /// @details |
---|
| 768 | /// The reconstructed array is written to output. The output array needs to |
---|
| 769 | /// be defined beforehand: no checking is done on the memory. |
---|
| 770 | /// \param output The array that is written to. |
---|
| 771 | |
---|
[378] | 772 | // Need check for change in number of pixels! |
---|
| 773 | for(int i=0;i<this->numPixels;i++){ |
---|
| 774 | if(this->reconExists) output[i] = this->recon[i]; |
---|
| 775 | else output[i] = 0.; |
---|
| 776 | } |
---|
[3] | 777 | } |
---|
[378] | 778 | //-------------------------------------------------------------------- |
---|
[3] | 779 | |
---|
[378] | 780 | void Cube::removeMW() |
---|
| 781 | { |
---|
[528] | 782 | /// @details |
---|
| 783 | /// The channels corresponding to the Milky Way range (as given by the Param |
---|
| 784 | /// set) are all set to 0 in the pixel array. |
---|
| 785 | /// Only done if the appropriate flag is set, and the pixels are not BLANK. |
---|
| 786 | /// \deprecated |
---|
| 787 | |
---|
[378] | 788 | if(this->par.getFlagMW()){ |
---|
| 789 | for(int pix=0;pix<this->axisDim[0]*this->axisDim[1];pix++){ |
---|
| 790 | for(int z=0;z<this->axisDim[2];z++){ |
---|
| 791 | int pos = z*this->axisDim[0]*this->axisDim[1] + pix; |
---|
| 792 | if(!this->isBlank(pos) && this->par.isInMW(z)) this->array[pos]=0.; |
---|
| 793 | } |
---|
[103] | 794 | } |
---|
[86] | 795 | } |
---|
| 796 | } |
---|
[378] | 797 | //-------------------------------------------------------------------- |
---|
[86] | 798 | |
---|
[378] | 799 | void Cube::setCubeStats() |
---|
| 800 | { |
---|
[528] | 801 | /// @details |
---|
| 802 | /// Calculates the full statistics for the cube: |
---|
| 803 | /// mean, rms, median, madfm |
---|
| 804 | /// Only do this if the threshold has not been defined (ie. is still 0., |
---|
| 805 | /// its default). |
---|
| 806 | /// Also work out the threshold and store it in the par set. |
---|
| 807 | /// |
---|
| 808 | /// Different from Cube::setCubeStatsOld() as it doesn't use the |
---|
| 809 | /// getStats functions but has own versions of them hardcoded to |
---|
| 810 | /// ignore BLANKs and MW channels. This saves on memory usage -- necessary |
---|
| 811 | /// for dealing with very big files. |
---|
| 812 | /// |
---|
| 813 | /// Three cases exist: |
---|
| 814 | /// <ul><li>Simple case, with no reconstruction/smoothing: all stats |
---|
| 815 | /// calculated from the original array. |
---|
| 816 | /// <li>Wavelet reconstruction: mean & median calculated from the |
---|
| 817 | /// original array, and stddev & madfm from the residual. |
---|
| 818 | /// <li>Smoothing: all four stats calculated from the recon array |
---|
| 819 | /// (which holds the smoothed data). |
---|
| 820 | /// </ul> |
---|
[189] | 821 | |
---|
[460] | 822 | if(this->par.getFlagUserThreshold() ){ |
---|
[378] | 823 | // if the user has defined a threshold, set this in the StatsContainer |
---|
| 824 | this->Stats.setThreshold( this->par.getThreshold() ); |
---|
| 825 | } |
---|
| 826 | else{ |
---|
| 827 | // only work out the stats if we need to. |
---|
| 828 | // the only reason we don't is if the user has specified a threshold. |
---|
[205] | 829 | |
---|
[460] | 830 | this->Stats.setRobust(this->par.getFlagRobustStats()); |
---|
| 831 | |
---|
[378] | 832 | if(this->par.isVerbose()) |
---|
| 833 | std::cout << "Calculating the cube statistics... " << std::flush; |
---|
[205] | 834 | |
---|
[741] | 835 | // long xysize = this->axisDim[0]*this->axisDim[1]; |
---|
[211] | 836 | |
---|
[378] | 837 | bool *mask = new bool[this->numPixels]; |
---|
[741] | 838 | int vox=0,goodSize = 0; |
---|
| 839 | for(int z=0;z<this->axisDim[2];z++){ |
---|
[378] | 840 | for(int y=0;y<this->axisDim[1];y++){ |
---|
[741] | 841 | for(int x=0;x<this->axisDim[0];x++){ |
---|
| 842 | // vox = z * xysize + y*this->axisDim[0] + x; |
---|
| 843 | bool isBlank=this->isBlank(vox); |
---|
| 844 | bool isMW = this->par.isInMW(z); |
---|
| 845 | bool statOK = this->par.isStatOK(x,y,z); |
---|
| 846 | mask[vox] = (!isBlank && !isMW && statOK ); |
---|
[378] | 847 | if(mask[vox]) goodSize++; |
---|
[741] | 848 | vox++; |
---|
[378] | 849 | } |
---|
[211] | 850 | } |
---|
[205] | 851 | } |
---|
[212] | 852 | |
---|
[649] | 853 | // float mean,median,stddev,madfm; |
---|
[378] | 854 | if( this->par.getFlagATrous() ){ |
---|
| 855 | // Case #2 -- wavelet reconstruction |
---|
| 856 | // just get mean & median from orig array, and rms & madfm from |
---|
| 857 | // residual recompute array values to be residuals & then find |
---|
| 858 | // stddev & madfm |
---|
| 859 | if(!this->reconExists) |
---|
| 860 | duchampError("setCubeStats", |
---|
| 861 | "Reconstruction not yet done!\nCannot calculate stats!\n"); |
---|
| 862 | else{ |
---|
| 863 | float *tempArray = new float[goodSize]; |
---|
[211] | 864 | |
---|
[378] | 865 | goodSize=0; |
---|
[751] | 866 | vox=0; |
---|
[741] | 867 | for(int z=0;z<this->axisDim[2];z++){ |
---|
[378] | 868 | for(int y=0;y<this->axisDim[1];y++){ |
---|
[741] | 869 | for(int x=0;x<this->axisDim[0];x++){ |
---|
| 870 | // vox = z * xysize + y*this->axisDim[0] + x; |
---|
[378] | 871 | if(mask[vox]) tempArray[goodSize++] = this->array[vox]; |
---|
[741] | 872 | vox++; |
---|
[378] | 873 | } |
---|
[275] | 874 | } |
---|
| 875 | } |
---|
[258] | 876 | |
---|
[378] | 877 | // First, find the mean of the original array. Store it. |
---|
[647] | 878 | this->Stats.setMean( findMean(tempArray, goodSize) ); |
---|
[275] | 879 | |
---|
[378] | 880 | // Now sort it and find the median. Store it. |
---|
[647] | 881 | this->Stats.setMedian( findMedian(tempArray, goodSize, true) ); |
---|
[275] | 882 | |
---|
[649] | 883 | // Now calculate the residuals and find the mean & median of |
---|
| 884 | // them. We don't store these, but they are necessary to find |
---|
| 885 | // the sttdev & madfm. |
---|
[378] | 886 | goodSize = 0; |
---|
[741] | 887 | // for(int p=0;p<xysize;p++){ |
---|
| 888 | vox=0; |
---|
| 889 | for(int z=0;z<this->axisDim[2];z++){ |
---|
| 890 | for(int y=0;y<this->axisDim[1];y++){ |
---|
| 891 | for(int x=0;x<this->axisDim[0];x++){ |
---|
| 892 | // vox = z * xysize + p; |
---|
[378] | 893 | if(mask[vox]) |
---|
| 894 | tempArray[goodSize++] = this->array[vox] - this->recon[vox]; |
---|
[741] | 895 | vox++; |
---|
| 896 | } |
---|
[378] | 897 | } |
---|
[211] | 898 | } |
---|
[741] | 899 | |
---|
[647] | 900 | this->Stats.setStddev( findStddev(tempArray, goodSize) ); |
---|
[275] | 901 | |
---|
[378] | 902 | // Now find the madfm of the residuals. Store it. |
---|
[762] | 903 | this->Stats.setMadfm( findMADFM(tempArray, goodSize, true) ); |
---|
[378] | 904 | |
---|
| 905 | delete [] tempArray; |
---|
[275] | 906 | } |
---|
[378] | 907 | } |
---|
| 908 | else if(this->par.getFlagSmooth()) { |
---|
| 909 | // Case #3 -- smoothing |
---|
| 910 | // get all four stats from the recon array, which holds the |
---|
| 911 | // smoothed data. This can just be done with the |
---|
| 912 | // StatsContainer::calculate function, using the mask generated |
---|
| 913 | // earlier. |
---|
| 914 | if(!this->reconExists) |
---|
| 915 | duchampError("setCubeStats","Smoothing not yet done!\nCannot calculate stats!\n"); |
---|
| 916 | else this->Stats.calculate(this->recon,this->numPixels,mask); |
---|
| 917 | } |
---|
| 918 | else{ |
---|
| 919 | // Case #1 -- default case, with no smoothing or reconstruction. |
---|
| 920 | // get all four stats from the original array. This can just be |
---|
| 921 | // done with the StatsContainer::calculate function, using the |
---|
| 922 | // mask generated earlier. |
---|
| 923 | this->Stats.calculate(this->array,this->numPixels,mask); |
---|
[211] | 924 | } |
---|
[205] | 925 | |
---|
[378] | 926 | this->Stats.setUseFDR( this->par.getFlagFDR() ); |
---|
| 927 | // If the FDR method has been requested, define the P-value |
---|
| 928 | // threshold |
---|
| 929 | if(this->par.getFlagFDR()) this->setupFDR(); |
---|
| 930 | else{ |
---|
| 931 | // otherwise, calculate threshold based on the requested SNR cut |
---|
| 932 | // level, and then set the threshold parameter in the Par set. |
---|
| 933 | this->Stats.setThresholdSNR( this->par.getCut() ); |
---|
| 934 | this->par.setThreshold( this->Stats.getThreshold() ); |
---|
| 935 | } |
---|
| 936 | |
---|
| 937 | delete [] mask; |
---|
| 938 | |
---|
[275] | 939 | } |
---|
[206] | 940 | |
---|
[378] | 941 | if(this->par.isVerbose()){ |
---|
| 942 | std::cout << "Using "; |
---|
| 943 | if(this->par.getFlagFDR()) std::cout << "effective "; |
---|
| 944 | std::cout << "flux threshold of: "; |
---|
| 945 | float thresh = this->Stats.getThreshold(); |
---|
| 946 | if(this->par.getFlagNegative()) thresh *= -1.; |
---|
[539] | 947 | std::cout << thresh; |
---|
| 948 | if(this->par.getFlagGrowth()){ |
---|
| 949 | std::cout << " and growing to threshold of: "; |
---|
[777] | 950 | if(this->par.getFlagUserGrowthThreshold()) thresh= this->par.getGrowthThreshold(); |
---|
| 951 | else thresh= this->Stats.snrToValue(this->par.getGrowthCut()); |
---|
| 952 | if(this->par.getFlagNegative()) thresh *= -1.; |
---|
| 953 | std::cout << thresh; |
---|
[539] | 954 | } |
---|
| 955 | std::cout << std::endl; |
---|
[205] | 956 | } |
---|
[309] | 957 | |
---|
[205] | 958 | } |
---|
[378] | 959 | //-------------------------------------------------------------------- |
---|
[211] | 960 | |
---|
[378] | 961 | void Cube::setupFDR() |
---|
| 962 | { |
---|
[528] | 963 | /// @details |
---|
| 964 | /// Call the setupFDR(float *) function on the pixel array of the |
---|
| 965 | /// cube. This is the usual way of running it. |
---|
| 966 | /// |
---|
| 967 | /// However, if we are in smoothing mode, we calculate the FDR |
---|
| 968 | /// parameters using the recon array, which holds the smoothed |
---|
| 969 | /// data. Gives an error message if the reconExists flag is not set. |
---|
| 970 | |
---|
[378] | 971 | if(this->par.getFlagSmooth()) |
---|
| 972 | if(this->reconExists) this->setupFDR(this->recon); |
---|
| 973 | else{ |
---|
| 974 | duchampError("setupFDR", |
---|
| 975 | "Smoothing not done properly! Using original array for defining threshold.\n"); |
---|
| 976 | this->setupFDR(this->array); |
---|
| 977 | } |
---|
| 978 | else if( this->par.getFlagATrous() ){ |
---|
| 979 | this->setupFDR(this->recon); |
---|
| 980 | } |
---|
[275] | 981 | else{ |
---|
| 982 | this->setupFDR(this->array); |
---|
| 983 | } |
---|
| 984 | } |
---|
[378] | 985 | //-------------------------------------------------------------------- |
---|
[275] | 986 | |
---|
[378] | 987 | void Cube::setupFDR(float *input) |
---|
| 988 | { |
---|
[528] | 989 | /// @details |
---|
| 990 | /// Determines the critical Probability value for the False |
---|
| 991 | /// Discovery Rate detection routine. All pixels in the given arry |
---|
| 992 | /// with Prob less than this value will be considered detections. |
---|
| 993 | /// |
---|
| 994 | /// Note that the Stats of the cube need to be calculated first. |
---|
| 995 | /// |
---|
| 996 | /// The Prob here is the probability, assuming a Normal |
---|
| 997 | /// distribution, of obtaining a value as high or higher than the |
---|
| 998 | /// pixel value (ie. only the positive tail of the PDF). |
---|
| 999 | /// |
---|
| 1000 | /// The probabilities are calculated using the |
---|
| 1001 | /// StatsContainer::getPValue(), which calculates the z-statistic, |
---|
| 1002 | /// and then the probability via |
---|
| 1003 | /// \f$0.5\operatorname{erfc}(z/\sqrt{2})\f$ -- giving the positive |
---|
| 1004 | /// tail probability. |
---|
[189] | 1005 | |
---|
[378] | 1006 | // first calculate p-value for each pixel -- assume Gaussian for now. |
---|
[190] | 1007 | |
---|
[378] | 1008 | float *orderedP = new float[this->numPixels]; |
---|
| 1009 | int count = 0; |
---|
| 1010 | for(int x=0;x<this->axisDim[0];x++){ |
---|
| 1011 | for(int y=0;y<this->axisDim[1];y++){ |
---|
| 1012 | for(int z=0;z<this->axisDim[2];z++){ |
---|
| 1013 | int pix = z * this->axisDim[0]*this->axisDim[1] + |
---|
| 1014 | y*this->axisDim[0] + x; |
---|
[190] | 1015 | |
---|
[378] | 1016 | if(!(this->par.isBlank(this->array[pix])) && !this->par.isInMW(z)){ |
---|
| 1017 | // only look at non-blank, valid pixels |
---|
| 1018 | // orderedP[count++] = this->Stats.getPValue(this->array[pix]); |
---|
| 1019 | orderedP[count++] = this->Stats.getPValue(input[pix]); |
---|
| 1020 | } |
---|
[263] | 1021 | } |
---|
| 1022 | } |
---|
[190] | 1023 | } |
---|
[3] | 1024 | |
---|
[378] | 1025 | // now order them |
---|
| 1026 | std::stable_sort(orderedP,orderedP+count); |
---|
[190] | 1027 | |
---|
[378] | 1028 | // now find the maximum P value. |
---|
| 1029 | int max = 0; |
---|
[777] | 1030 | double cN = 0.; |
---|
[543] | 1031 | // Calculate number of correlated pixels. Assume all spatial |
---|
| 1032 | // pixels within the beam are correlated, and multiply this by the |
---|
[788] | 1033 | // number of correlated pixels as determined by the beam |
---|
[800] | 1034 | int numVox; |
---|
[803] | 1035 | if(this->head.beam().isDefined()) numVox = int(ceil(this->head.beam().area())); |
---|
[800] | 1036 | else numVox = 1; |
---|
[543] | 1037 | if(this->head.canUseThirdAxis()) numVox *= this->par.getFDRnumCorChan(); |
---|
[378] | 1038 | for(int psfCtr=1;psfCtr<=numVox;psfCtr++) cN += 1./float(psfCtr); |
---|
[190] | 1039 | |
---|
[378] | 1040 | double slope = this->par.getAlpha()/cN; |
---|
| 1041 | for(int loopCtr=0;loopCtr<count;loopCtr++) { |
---|
| 1042 | if( orderedP[loopCtr] < (slope * double(loopCtr+1)/ double(count)) ){ |
---|
| 1043 | max = loopCtr; |
---|
| 1044 | } |
---|
[190] | 1045 | } |
---|
| 1046 | |
---|
[378] | 1047 | this->Stats.setPThreshold( orderedP[max] ); |
---|
[190] | 1048 | |
---|
| 1049 | |
---|
[378] | 1050 | // Find real value of the P threshold by finding the inverse of the |
---|
| 1051 | // error function -- root finding with brute force technique |
---|
| 1052 | // (relatively slow, but we only do it once). |
---|
| 1053 | double zStat = 0.; |
---|
| 1054 | double deltaZ = 0.1; |
---|
| 1055 | double tolerance = 1.e-6; |
---|
| 1056 | double initial = 0.5 * erfc(zStat/M_SQRT2) - this->Stats.getPThreshold(); |
---|
| 1057 | do{ |
---|
| 1058 | zStat+=deltaZ; |
---|
| 1059 | double current = 0.5 * erfc(zStat/M_SQRT2) - this->Stats.getPThreshold(); |
---|
| 1060 | if((initial*current)<0.){ |
---|
| 1061 | zStat-=deltaZ; |
---|
| 1062 | deltaZ/=2.; |
---|
| 1063 | } |
---|
| 1064 | }while(deltaZ>tolerance); |
---|
| 1065 | this->Stats.setThreshold( zStat*this->Stats.getSpread() + |
---|
| 1066 | this->Stats.getMiddle() ); |
---|
[192] | 1067 | |
---|
[378] | 1068 | /////////////////////////// |
---|
| 1069 | // if(TESTING){ |
---|
| 1070 | // std::stringstream ss; |
---|
| 1071 | // float *xplot = new float[2*max]; |
---|
| 1072 | // for(int i=0;i<2*max;i++) xplot[i]=float(i)/float(count); |
---|
| 1073 | // cpgopen("latestFDR.ps/vcps"); |
---|
| 1074 | // cpgpap(8.,1.); |
---|
| 1075 | // cpgslw(3); |
---|
| 1076 | // cpgenv(0,float(2*max)/float(count),0,orderedP[2*max],0,0); |
---|
| 1077 | // cpglab("i/N (index)", "p-value",""); |
---|
| 1078 | // cpgpt(2*max,xplot,orderedP,DOT); |
---|
[263] | 1079 | |
---|
[378] | 1080 | // ss.str(""); |
---|
| 1081 | // ss << "\\gm = " << this->Stats.getMiddle(); |
---|
| 1082 | // cpgtext(max/(4.*count),0.9*orderedP[2*max],ss.str().c_str()); |
---|
| 1083 | // ss.str(""); |
---|
| 1084 | // ss << "\\gs = " << this->Stats.getSpread(); |
---|
| 1085 | // cpgtext(max/(4.*count),0.85*orderedP[2*max],ss.str().c_str()); |
---|
| 1086 | // ss.str(""); |
---|
| 1087 | // ss << "Slope = " << slope; |
---|
| 1088 | // cpgtext(max/(4.*count),0.8*orderedP[2*max],ss.str().c_str()); |
---|
| 1089 | // ss.str(""); |
---|
| 1090 | // ss << "Alpha = " << this->par.getAlpha(); |
---|
| 1091 | // cpgtext(max/(4.*count),0.75*orderedP[2*max],ss.str().c_str()); |
---|
| 1092 | // ss.str(""); |
---|
| 1093 | // ss << "c\\dN\\u = " << cN; |
---|
| 1094 | // cpgtext(max/(4.*count),0.7*orderedP[2*max],ss.str().c_str()); |
---|
| 1095 | // ss.str(""); |
---|
| 1096 | // ss << "max = "<<max << " (out of " << count << ")"; |
---|
| 1097 | // cpgtext(max/(4.*count),0.65*orderedP[2*max],ss.str().c_str()); |
---|
| 1098 | // ss.str(""); |
---|
| 1099 | // ss << "Threshold = "<<zStat*this->Stats.getSpread()+this->Stats.getMiddle(); |
---|
| 1100 | // cpgtext(max/(4.*count),0.6*orderedP[2*max],ss.str().c_str()); |
---|
[263] | 1101 | |
---|
[378] | 1102 | // cpgslw(1); |
---|
| 1103 | // cpgsci(RED); |
---|
| 1104 | // cpgmove(0,0); |
---|
| 1105 | // cpgdraw(1,slope); |
---|
| 1106 | // cpgsci(BLUE); |
---|
| 1107 | // cpgsls(DOTTED); |
---|
| 1108 | // cpgmove(0,orderedP[max]); |
---|
| 1109 | // cpgdraw(2*max/float(count),orderedP[max]); |
---|
| 1110 | // cpgmove(max/float(count),0); |
---|
| 1111 | // cpgdraw(max/float(count),orderedP[2*max]); |
---|
| 1112 | // cpgsci(GREEN); |
---|
| 1113 | // cpgsls(SOLID); |
---|
| 1114 | // for(int i=1;i<=10;i++) { |
---|
| 1115 | // ss.str(""); |
---|
| 1116 | // ss << float(i)/2. << "\\gs"; |
---|
| 1117 | // float prob = 0.5*erfc((float(i)/2.)/M_SQRT2); |
---|
| 1118 | // cpgtick(0, 0, 0, orderedP[2*max], |
---|
| 1119 | // prob/orderedP[2*max], |
---|
| 1120 | // 0, 1, 1.5, 90., ss.str().c_str()); |
---|
| 1121 | // } |
---|
| 1122 | // cpgend(); |
---|
| 1123 | // delete [] xplot; |
---|
| 1124 | // } |
---|
| 1125 | delete [] orderedP; |
---|
[263] | 1126 | |
---|
[378] | 1127 | } |
---|
| 1128 | //-------------------------------------------------------------------- |
---|
[87] | 1129 | |
---|
[834] | 1130 | void Cube::Search() |
---|
[729] | 1131 | { |
---|
| 1132 | /// @details |
---|
| 1133 | /// This acts as a switching function to select the correct searching function based on the user's parameters. |
---|
| 1134 | /// @param verboseFlag If true, text is written to stdout describing the search function being used. |
---|
| 1135 | if(this->par.getFlagATrous()){ |
---|
[834] | 1136 | if(this->par.isVerbose()) std::cout<<"Commencing search in reconstructed cube..."<<std::endl; |
---|
[729] | 1137 | this->ReconSearch(); |
---|
| 1138 | } |
---|
| 1139 | else if(this->par.getFlagSmooth()){ |
---|
[834] | 1140 | if(this->par.isVerbose()) std::cout<<"Commencing search in smoothed cube..."<<std::endl; |
---|
[729] | 1141 | this->SmoothSearch(); |
---|
| 1142 | } |
---|
| 1143 | else{ |
---|
[834] | 1144 | if(this->par.isVerbose()) std::cout<<"Commencing search in cube..."<<std::endl; |
---|
[729] | 1145 | this->CubicSearch(); |
---|
| 1146 | } |
---|
| 1147 | |
---|
| 1148 | } |
---|
| 1149 | |
---|
[378] | 1150 | bool Cube::isDetection(long x, long y, long z) |
---|
| 1151 | { |
---|
[528] | 1152 | /// @details |
---|
| 1153 | /// Is a given voxel at position (x,y,z) a detection, based on the statistics |
---|
| 1154 | /// in the Cube's StatsContainer? |
---|
| 1155 | /// If the pixel lies outside the valid range for the data array, |
---|
| 1156 | /// return false. |
---|
| 1157 | /// \param x X-value of the Cube's voxel to be tested. |
---|
| 1158 | /// \param y Y-value of the Cube's voxel to be tested. |
---|
| 1159 | /// \param z Z-value of the Cube's voxel to be tested. |
---|
| 1160 | |
---|
[220] | 1161 | long voxel = z*axisDim[0]*axisDim[1] + y*axisDim[0] + x; |
---|
| 1162 | return DataArray::isDetection(array[voxel]); |
---|
[419] | 1163 | } |
---|
[378] | 1164 | //-------------------------------------------------------------------- |
---|
[220] | 1165 | |
---|
[420] | 1166 | void Cube::calcObjectFluxes() |
---|
| 1167 | { |
---|
[528] | 1168 | /// @details |
---|
| 1169 | /// A function to calculate the fluxes and centroids for each |
---|
| 1170 | /// object in the Cube's list of detections. Uses |
---|
| 1171 | /// Detection::calcFluxes() for each object. |
---|
| 1172 | |
---|
[420] | 1173 | std::vector<Detection>::iterator obj; |
---|
| 1174 | for(obj=this->objectList->begin();obj<this->objectList->end();obj++){ |
---|
| 1175 | obj->calcFluxes(this->array, this->axisDim); |
---|
| 1176 | if(this->par.getFlagUserThreshold()) |
---|
| 1177 | obj->setPeakSNR( obj->getPeakFlux() / this->Stats.getThreshold() ); |
---|
| 1178 | else |
---|
| 1179 | obj->setPeakSNR( (obj->getPeakFlux() - this->Stats.getMiddle()) / this->Stats.getSpread() ); |
---|
| 1180 | } |
---|
| 1181 | } |
---|
| 1182 | //-------------------------------------------------------------------- |
---|
| 1183 | |
---|
[378] | 1184 | void Cube::calcObjectWCSparams() |
---|
| 1185 | { |
---|
[528] | 1186 | /// @details |
---|
| 1187 | /// A function that calculates the WCS parameters for each object in the |
---|
| 1188 | /// Cube's list of detections. |
---|
| 1189 | /// Each object gets an ID number assigned to it (which is simply its order |
---|
| 1190 | /// in the list), and if the WCS is good, the WCS paramters are calculated. |
---|
[460] | 1191 | |
---|
| 1192 | std::vector<Detection>::iterator obj; |
---|
[461] | 1193 | int ct=0; |
---|
[777] | 1194 | ProgressBar bar; |
---|
| 1195 | if(this->par.isVerbose()) bar.init(this->objectList->size()); |
---|
[460] | 1196 | for(obj=this->objectList->begin();obj<this->objectList->end();obj++){ |
---|
[777] | 1197 | // std::cerr << ct << ' ' << this->array << '\n'; |
---|
| 1198 | if(this->par.isVerbose()) bar.update(ct); |
---|
[461] | 1199 | obj->setID(ct++); |
---|
[681] | 1200 | if(!obj->hasParams()){ |
---|
| 1201 | obj->setCentreType(this->par.getPixelCentre()); |
---|
| 1202 | obj->calcFluxes(this->array,this->axisDim); |
---|
| 1203 | // obj->calcWCSparams(this->array,this->axisDim,this->head); |
---|
| 1204 | obj->calcWCSparams(this->head); |
---|
| 1205 | obj->calcIntegFlux(this->array,this->axisDim,this->head); |
---|
| 1206 | |
---|
| 1207 | if(this->par.getFlagUserThreshold()) |
---|
| 1208 | obj->setPeakSNR( obj->getPeakFlux() / this->Stats.getThreshold() ); |
---|
| 1209 | else |
---|
| 1210 | obj->setPeakSNR( (obj->getPeakFlux() - this->Stats.getMiddle()) / this->Stats.getSpread() ); |
---|
| 1211 | } |
---|
[378] | 1212 | } |
---|
[777] | 1213 | if(this->par.isVerbose()) bar.remove(); |
---|
[220] | 1214 | |
---|
[378] | 1215 | if(!this->head.isWCS()){ |
---|
| 1216 | // if the WCS is bad, set the object names to Obj01 etc |
---|
| 1217 | int numspaces = int(log10(this->objectList->size())) + 1; |
---|
| 1218 | std::stringstream ss; |
---|
[623] | 1219 | for(size_t i=0;i<this->objectList->size();i++){ |
---|
[378] | 1220 | ss.str(""); |
---|
| 1221 | ss << "Obj" << std::setfill('0') << std::setw(numspaces) << i+1; |
---|
[623] | 1222 | this->objectList->at(i).setName(ss.str()); |
---|
[378] | 1223 | } |
---|
[220] | 1224 | } |
---|
[378] | 1225 | |
---|
[220] | 1226 | } |
---|
[378] | 1227 | //-------------------------------------------------------------------- |
---|
[220] | 1228 | |
---|
[418] | 1229 | void Cube::calcObjectWCSparams(std::vector< std::vector<PixelInfo::Voxel> > bigVoxList) |
---|
| 1230 | { |
---|
[528] | 1231 | /// @details |
---|
| 1232 | /// A function that calculates the WCS parameters for each object in the |
---|
| 1233 | /// Cube's list of detections. |
---|
| 1234 | /// Each object gets an ID number assigned to it (which is simply its order |
---|
| 1235 | /// in the list), and if the WCS is good, the WCS paramters are calculated. |
---|
| 1236 | /// |
---|
| 1237 | /// This version uses vectors of Voxels to define the fluxes. |
---|
| 1238 | /// |
---|
| 1239 | /// \param bigVoxList A vector of vectors of Voxels, with the same |
---|
| 1240 | /// number of elements as this->objectList, where each element is a |
---|
| 1241 | /// vector of Voxels corresponding to the same voxels in each |
---|
| 1242 | /// detection and indicating the flux of each voxel. |
---|
[418] | 1243 | |
---|
[460] | 1244 | std::vector<Detection>::iterator obj; |
---|
[461] | 1245 | int ct=0; |
---|
[460] | 1246 | for(obj=this->objectList->begin();obj<this->objectList->end();obj++){ |
---|
[461] | 1247 | obj->setID(ct+1); |
---|
[727] | 1248 | if(!obj->hasParams()){ |
---|
[681] | 1249 | obj->setCentreType(this->par.getPixelCentre()); |
---|
| 1250 | obj->calcFluxes(bigVoxList[ct]); |
---|
| 1251 | obj->calcWCSparams(this->head); |
---|
[719] | 1252 | obj->calcIntegFlux(this->axisDim[2],bigVoxList[ct],this->head); |
---|
[681] | 1253 | |
---|
| 1254 | if(this->par.getFlagUserThreshold()) |
---|
| 1255 | obj->setPeakSNR( obj->getPeakFlux() / this->Stats.getThreshold() ); |
---|
| 1256 | else |
---|
| 1257 | obj->setPeakSNR( (obj->getPeakFlux() - this->Stats.getMiddle()) / this->Stats.getSpread() ); |
---|
| 1258 | } |
---|
[461] | 1259 | ct++; |
---|
[418] | 1260 | } |
---|
| 1261 | |
---|
| 1262 | if(!this->head.isWCS()){ |
---|
| 1263 | // if the WCS is bad, set the object names to Obj01 etc |
---|
| 1264 | int numspaces = int(log10(this->objectList->size())) + 1; |
---|
| 1265 | std::stringstream ss; |
---|
[623] | 1266 | for(size_t i=0;i<this->objectList->size();i++){ |
---|
[418] | 1267 | ss.str(""); |
---|
| 1268 | ss << "Obj" << std::setfill('0') << std::setw(numspaces) << i+1; |
---|
[623] | 1269 | this->objectList->at(i).setName(ss.str()); |
---|
[418] | 1270 | } |
---|
| 1271 | } |
---|
| 1272 | |
---|
| 1273 | } |
---|
| 1274 | //-------------------------------------------------------------------- |
---|
| 1275 | |
---|
[378] | 1276 | void Cube::updateDetectMap() |
---|
| 1277 | { |
---|
[570] | 1278 | /// @details A function that, for each detected object in the |
---|
| 1279 | /// cube's list, increments the cube's detection map by the |
---|
| 1280 | /// required amount at each pixel. Uses |
---|
| 1281 | /// updateDetectMap(Detection). |
---|
[220] | 1282 | |
---|
[570] | 1283 | std::vector<Detection>::iterator obj; |
---|
| 1284 | for(obj=this->objectList->begin();obj<this->objectList->end();obj++){ |
---|
| 1285 | this->updateDetectMap(*obj); |
---|
| 1286 | } |
---|
[378] | 1287 | |
---|
| 1288 | } |
---|
| 1289 | //-------------------------------------------------------------------- |
---|
| 1290 | |
---|
| 1291 | void Cube::updateDetectMap(Detection obj) |
---|
| 1292 | { |
---|
[528] | 1293 | /// @details |
---|
| 1294 | /// A function that, for the given object, increments the cube's |
---|
| 1295 | /// detection map by the required amount at each pixel. |
---|
| 1296 | /// |
---|
| 1297 | /// \param obj A Detection object that is being incorporated into the map. |
---|
[378] | 1298 | |
---|
[570] | 1299 | std::vector<Voxel> vlist = obj.getPixelSet(); |
---|
| 1300 | for(std::vector<Voxel>::iterator vox=vlist.begin();vox<vlist.end();vox++) |
---|
| 1301 | this->detectMap[vox->getX()+vox->getY()*this->axisDim[0]]++; |
---|
[258] | 1302 | |
---|
[378] | 1303 | } |
---|
| 1304 | //-------------------------------------------------------------------- |
---|
[220] | 1305 | |
---|
[378] | 1306 | float Cube::enclosedFlux(Detection obj) |
---|
| 1307 | { |
---|
[528] | 1308 | /// @details |
---|
| 1309 | /// A function to calculate the flux enclosed by the range |
---|
| 1310 | /// of pixels detected in the object obj (not necessarily all |
---|
| 1311 | /// pixels will have been detected). |
---|
| 1312 | /// |
---|
| 1313 | /// \param obj The Detection under consideration. |
---|
| 1314 | |
---|
[378] | 1315 | obj.calcFluxes(this->array, this->axisDim); |
---|
| 1316 | int xsize = obj.getXmax()-obj.getXmin()+1; |
---|
| 1317 | int ysize = obj.getYmax()-obj.getYmin()+1; |
---|
| 1318 | int zsize = obj.getZmax()-obj.getZmin()+1; |
---|
| 1319 | std::vector <float> fluxArray(xsize*ysize*zsize,0.); |
---|
| 1320 | for(int x=0;x<xsize;x++){ |
---|
| 1321 | for(int y=0;y<ysize;y++){ |
---|
| 1322 | for(int z=0;z<zsize;z++){ |
---|
| 1323 | fluxArray[x+y*xsize+z*ysize*xsize] = |
---|
| 1324 | this->getPixValue(x+obj.getXmin(), |
---|
| 1325 | y+obj.getYmin(), |
---|
| 1326 | z+obj.getZmin()); |
---|
| 1327 | if(this->par.getFlagNegative()) |
---|
| 1328 | fluxArray[x+y*xsize+z*ysize*xsize] *= -1.; |
---|
| 1329 | } |
---|
[87] | 1330 | } |
---|
| 1331 | } |
---|
[378] | 1332 | float sum = 0.; |
---|
[623] | 1333 | for(size_t i=0;i<fluxArray.size();i++) |
---|
[378] | 1334 | if(!this->par.isBlank(fluxArray[i])) sum+=fluxArray[i]; |
---|
| 1335 | return sum; |
---|
[87] | 1336 | } |
---|
[378] | 1337 | //-------------------------------------------------------------------- |
---|
[87] | 1338 | |
---|
[378] | 1339 | void Cube::setupColumns() |
---|
| 1340 | { |
---|
[528] | 1341 | /// @details |
---|
| 1342 | /// A front-end to the two setup routines in columns.cc. |
---|
| 1343 | /// |
---|
| 1344 | /// This first gets the starting precisions, which may be from |
---|
| 1345 | /// the input parameters. It then sets up the columns (calculates |
---|
| 1346 | /// their widths and precisions and so on based on the values |
---|
| 1347 | /// within). The precisions are also stored in each Detection |
---|
| 1348 | /// object. |
---|
| 1349 | /// |
---|
| 1350 | /// Need to have called calcObjectWCSparams() somewhere |
---|
| 1351 | /// beforehand. |
---|
[438] | 1352 | |
---|
| 1353 | std::vector<Detection>::iterator obj; |
---|
| 1354 | for(obj=this->objectList->begin();obj<this->objectList->end();obj++){ |
---|
| 1355 | obj->setVelPrec( this->par.getPrecVel() ); |
---|
| 1356 | obj->setFpeakPrec( this->par.getPrecFlux() ); |
---|
[439] | 1357 | obj->setXYZPrec( Column::prXYZ ); |
---|
| 1358 | obj->setPosPrec( Column::prWPOS ); |
---|
[438] | 1359 | obj->setFintPrec( this->par.getPrecFlux() ); |
---|
| 1360 | obj->setSNRPrec( this->par.getPrecSNR() ); |
---|
| 1361 | } |
---|
[187] | 1362 | |
---|
[378] | 1363 | this->fullCols.clear(); |
---|
| 1364 | this->fullCols = getFullColSet(*(this->objectList), this->head); |
---|
[136] | 1365 | |
---|
[378] | 1366 | this->logCols.clear(); |
---|
| 1367 | this->logCols = getLogColSet(*(this->objectList), this->head); |
---|
[136] | 1368 | |
---|
[378] | 1369 | int vel,fpeak,fint,pos,xyz,snr; |
---|
| 1370 | vel = fullCols[VEL].getPrecision(); |
---|
| 1371 | fpeak = fullCols[FPEAK].getPrecision(); |
---|
| 1372 | snr = fullCols[SNRPEAK].getPrecision(); |
---|
| 1373 | xyz = fullCols[X].getPrecision(); |
---|
| 1374 | xyz = std::max(xyz, fullCols[Y].getPrecision()); |
---|
| 1375 | xyz = std::max(xyz, fullCols[Z].getPrecision()); |
---|
| 1376 | if(this->head.isWCS()) fint = fullCols[FINT].getPrecision(); |
---|
| 1377 | else fint = fullCols[FTOT].getPrecision(); |
---|
| 1378 | pos = fullCols[WRA].getPrecision(); |
---|
| 1379 | pos = std::max(pos, fullCols[WDEC].getPrecision()); |
---|
[144] | 1380 | |
---|
[424] | 1381 | for(obj=this->objectList->begin();obj<this->objectList->end();obj++){ |
---|
| 1382 | obj->setVelPrec(vel); |
---|
| 1383 | obj->setFpeakPrec(fpeak); |
---|
| 1384 | obj->setXYZPrec(xyz); |
---|
| 1385 | obj->setPosPrec(pos); |
---|
| 1386 | obj->setFintPrec(fint); |
---|
| 1387 | obj->setSNRPrec(snr); |
---|
[378] | 1388 | } |
---|
| 1389 | |
---|
[144] | 1390 | } |
---|
[378] | 1391 | //-------------------------------------------------------------------- |
---|
[136] | 1392 | |
---|
[378] | 1393 | bool Cube::objAtSpatialEdge(Detection obj) |
---|
| 1394 | { |
---|
[528] | 1395 | /// @details |
---|
| 1396 | /// A function to test whether the object obj |
---|
| 1397 | /// lies at the edge of the cube's spatial field -- |
---|
| 1398 | /// either at the boundary, or next to BLANKs. |
---|
| 1399 | /// |
---|
| 1400 | /// \param obj The Detection under consideration. |
---|
[136] | 1401 | |
---|
[378] | 1402 | bool atEdge = false; |
---|
[87] | 1403 | |
---|
[623] | 1404 | size_t pix = 0; |
---|
[570] | 1405 | std::vector<Voxel> voxlist = obj.getPixelSet(); |
---|
[378] | 1406 | while(!atEdge && pix<voxlist.size()){ |
---|
| 1407 | // loop over each pixel in the object, until we find an edge pixel. |
---|
| 1408 | for(int dx=-1;dx<=1;dx+=2){ |
---|
| 1409 | if( ((voxlist[pix].getX()+dx)<0) || |
---|
| 1410 | ((voxlist[pix].getX()+dx)>=this->axisDim[0]) ) |
---|
| 1411 | atEdge = true; |
---|
| 1412 | else if(this->isBlank(voxlist[pix].getX()+dx, |
---|
| 1413 | voxlist[pix].getY(), |
---|
| 1414 | voxlist[pix].getZ())) |
---|
| 1415 | atEdge = true; |
---|
| 1416 | } |
---|
| 1417 | for(int dy=-1;dy<=1;dy+=2){ |
---|
| 1418 | if( ((voxlist[pix].getY()+dy)<0) || |
---|
| 1419 | ((voxlist[pix].getY()+dy)>=this->axisDim[1]) ) |
---|
| 1420 | atEdge = true; |
---|
| 1421 | else if(this->isBlank(voxlist[pix].getX(), |
---|
| 1422 | voxlist[pix].getY()+dy, |
---|
| 1423 | voxlist[pix].getZ())) |
---|
| 1424 | atEdge = true; |
---|
| 1425 | } |
---|
| 1426 | pix++; |
---|
| 1427 | } |
---|
[87] | 1428 | |
---|
[378] | 1429 | return atEdge; |
---|
[192] | 1430 | } |
---|
[378] | 1431 | //-------------------------------------------------------------------- |
---|
[192] | 1432 | |
---|
[378] | 1433 | bool Cube::objAtSpectralEdge(Detection obj) |
---|
| 1434 | { |
---|
[528] | 1435 | /// @details |
---|
| 1436 | /// A function to test whether the object obj |
---|
| 1437 | /// lies at the edge of the cube's spectral extent -- |
---|
| 1438 | /// either at the boundary, or next to BLANKs. |
---|
| 1439 | /// |
---|
[529] | 1440 | /// \param obj The Detection under consideration. |
---|
[192] | 1441 | |
---|
[378] | 1442 | bool atEdge = false; |
---|
[192] | 1443 | |
---|
[623] | 1444 | size_t pix = 0; |
---|
[570] | 1445 | std::vector<Voxel> voxlist = obj.getPixelSet(); |
---|
[378] | 1446 | while(!atEdge && pix<voxlist.size()){ |
---|
| 1447 | // loop over each pixel in the object, until we find an edge pixel. |
---|
| 1448 | for(int dz=-1;dz<=1;dz+=2){ |
---|
| 1449 | if( ((voxlist[pix].getZ()+dz)<0) || |
---|
| 1450 | ((voxlist[pix].getZ()+dz)>=this->axisDim[2])) |
---|
| 1451 | atEdge = true; |
---|
| 1452 | else if(this->isBlank(voxlist[pix].getX(), |
---|
| 1453 | voxlist[pix].getY(), |
---|
| 1454 | voxlist[pix].getZ()+dz)) |
---|
| 1455 | atEdge = true; |
---|
| 1456 | } |
---|
| 1457 | pix++; |
---|
| 1458 | } |
---|
[192] | 1459 | |
---|
[378] | 1460 | return atEdge; |
---|
[87] | 1461 | } |
---|
[378] | 1462 | //-------------------------------------------------------------------- |
---|
[87] | 1463 | |
---|
[378] | 1464 | void Cube::setObjectFlags() |
---|
| 1465 | { |
---|
[528] | 1466 | /// @details |
---|
| 1467 | /// A function to set any warning flags for all the detected objects |
---|
| 1468 | /// associated with the cube. |
---|
| 1469 | /// Flags to be looked for: |
---|
| 1470 | /// <ul><li> Negative enclosed flux (N) |
---|
| 1471 | /// <li> Detection at edge of field (spatially) (E) |
---|
| 1472 | /// <li> Detection at edge of spectral region (S) |
---|
| 1473 | /// </ul> |
---|
[87] | 1474 | |
---|
[460] | 1475 | std::vector<Detection>::iterator obj; |
---|
| 1476 | for(obj=this->objectList->begin();obj<this->objectList->end();obj++){ |
---|
[87] | 1477 | |
---|
[460] | 1478 | if( this->enclosedFlux(*obj) < 0. ) |
---|
| 1479 | obj->addToFlagText("N"); |
---|
[87] | 1480 | |
---|
[460] | 1481 | if( this->objAtSpatialEdge(*obj) ) |
---|
| 1482 | obj->addToFlagText("E"); |
---|
[87] | 1483 | |
---|
[460] | 1484 | if( this->objAtSpectralEdge(*obj) && (this->axisDim[2] > 2)) |
---|
| 1485 | obj->addToFlagText("S"); |
---|
[87] | 1486 | |
---|
[510] | 1487 | if(obj->getFlagText()=="") obj->addToFlagText("-"); |
---|
| 1488 | |
---|
[378] | 1489 | } |
---|
[192] | 1490 | |
---|
[87] | 1491 | } |
---|
[378] | 1492 | //-------------------------------------------------------------------- |
---|
[87] | 1493 | |
---|
[129] | 1494 | |
---|
[220] | 1495 | |
---|
[378] | 1496 | /****************************************************************/ |
---|
| 1497 | ///////////////////////////////////////////////////////////// |
---|
| 1498 | //// Functions for Image class |
---|
| 1499 | ///////////////////////////////////////////////////////////// |
---|
[220] | 1500 | |
---|
[528] | 1501 | Image::Image(long size) |
---|
| 1502 | { |
---|
[378] | 1503 | // need error handling in case size<0 !!! |
---|
| 1504 | this->numPixels = this->numDim = 0; |
---|
[732] | 1505 | this->minSize = 2; |
---|
[378] | 1506 | if(size<0) |
---|
| 1507 | duchampError("Image(size)","Negative size -- could not define Image"); |
---|
| 1508 | else{ |
---|
[444] | 1509 | if(size>0 && !this->arrayAllocated){ |
---|
| 1510 | this->array = new float[size]; |
---|
| 1511 | this->arrayAllocated = true; |
---|
| 1512 | } |
---|
[378] | 1513 | this->numPixels = size; |
---|
| 1514 | this->axisDim = new long[2]; |
---|
[444] | 1515 | this->axisDimAllocated = true; |
---|
[378] | 1516 | this->numDim = 2; |
---|
| 1517 | } |
---|
[220] | 1518 | } |
---|
[378] | 1519 | //-------------------------------------------------------------------- |
---|
[220] | 1520 | |
---|
[528] | 1521 | Image::Image(long *dimensions) |
---|
| 1522 | { |
---|
[378] | 1523 | this->numPixels = this->numDim = 0; |
---|
[732] | 1524 | this->minSize = 2; |
---|
[378] | 1525 | int size = dimensions[0] * dimensions[1]; |
---|
| 1526 | if(size<0) |
---|
| 1527 | duchampError("Image(dimArray)","Negative size -- could not define Image"); |
---|
| 1528 | else{ |
---|
| 1529 | this->numPixels = size; |
---|
[444] | 1530 | if(size>0){ |
---|
| 1531 | this->array = new float[size]; |
---|
| 1532 | this->arrayAllocated = true; |
---|
| 1533 | } |
---|
[378] | 1534 | this->numDim=2; |
---|
| 1535 | this->axisDim = new long[2]; |
---|
[468] | 1536 | this->axisDimAllocated = true; |
---|
[378] | 1537 | for(int i=0;i<2;i++) this->axisDim[i] = dimensions[i]; |
---|
| 1538 | } |
---|
[220] | 1539 | } |
---|
[378] | 1540 | //-------------------------------------------------------------------- |
---|
[736] | 1541 | Image::Image(const Image &i): |
---|
| 1542 | DataArray(i) |
---|
| 1543 | { |
---|
| 1544 | this->operator=(i); |
---|
| 1545 | } |
---|
| 1546 | |
---|
[737] | 1547 | Image& Image::operator=(const Image &i) |
---|
[736] | 1548 | { |
---|
[737] | 1549 | if(this==&i) return *this; |
---|
[736] | 1550 | ((DataArray &) *this) = i; |
---|
| 1551 | this->minSize = i.minSize; |
---|
| 1552 | return *this; |
---|
| 1553 | } |
---|
| 1554 | |
---|
[378] | 1555 | //-------------------------------------------------------------------- |
---|
[220] | 1556 | |
---|
[378] | 1557 | void Image::saveArray(float *input, long size) |
---|
| 1558 | { |
---|
[528] | 1559 | /// @details |
---|
| 1560 | /// Saves the array in input to the pixel array Image::array. |
---|
| 1561 | /// The size of the array given must be the same as the current number of |
---|
| 1562 | /// pixels, else an error message is returned and nothing is done. |
---|
| 1563 | /// \param input The array of values to be saved. |
---|
| 1564 | /// \param size The size of input. |
---|
| 1565 | |
---|
[378] | 1566 | if(size != this->numPixels) |
---|
| 1567 | duchampError("Image::saveArray", |
---|
| 1568 | "Input array different size to existing array. Cannot save."); |
---|
| 1569 | else { |
---|
[444] | 1570 | if(this->numPixels>0 && this->arrayAllocated) delete [] array; |
---|
[378] | 1571 | this->numPixels = size; |
---|
[444] | 1572 | if(this->numPixels>0){ |
---|
| 1573 | this->array = new float[size]; |
---|
| 1574 | this->arrayAllocated = true; |
---|
| 1575 | for(int i=0;i<size;i++) this->array[i] = input[i]; |
---|
| 1576 | } |
---|
[378] | 1577 | } |
---|
[220] | 1578 | } |
---|
[378] | 1579 | //-------------------------------------------------------------------- |
---|
[220] | 1580 | |
---|
[378] | 1581 | void Image::extractSpectrum(float *Array, long *dim, long pixel) |
---|
| 1582 | { |
---|
[528] | 1583 | /// @details |
---|
| 1584 | /// A function to extract a 1-D spectrum from a 3-D array. |
---|
| 1585 | /// The array is assumed to be 3-D with the third dimension the spectral one. |
---|
| 1586 | /// The spectrum extracted is the one lying in the spatial pixel referenced |
---|
| 1587 | /// by the third argument. |
---|
| 1588 | /// The extracted spectrum is stored in the pixel array Image::array. |
---|
| 1589 | /// \param Array The array containing the pixel values, from which |
---|
| 1590 | /// the spectrum is extracted. |
---|
| 1591 | /// \param dim The array of dimension values. |
---|
| 1592 | /// \param pixel The spatial pixel that contains the desired spectrum. |
---|
| 1593 | |
---|
[378] | 1594 | if((pixel<0)||(pixel>=dim[0]*dim[1])) |
---|
| 1595 | duchampError("Image::extractSpectrum", |
---|
| 1596 | "Requested spatial pixel outside allowed range. Cannot save."); |
---|
| 1597 | else if(dim[2] != this->numPixels) |
---|
| 1598 | duchampError("Image::extractSpectrum", |
---|
| 1599 | "Input array different size to existing array. Cannot save."); |
---|
| 1600 | else { |
---|
[444] | 1601 | if(this->numPixels>0 && this->arrayAllocated) delete [] array; |
---|
[378] | 1602 | this->numPixels = dim[2]; |
---|
[444] | 1603 | if(this->numPixels>0){ |
---|
| 1604 | this->array = new float[dim[2]]; |
---|
| 1605 | this->arrayAllocated = true; |
---|
| 1606 | for(int z=0;z<dim[2];z++) this->array[z] = Array[z*dim[0]*dim[1] + pixel]; |
---|
| 1607 | } |
---|
[378] | 1608 | } |
---|
[258] | 1609 | } |
---|
[378] | 1610 | //-------------------------------------------------------------------- |
---|
[220] | 1611 | |
---|
[378] | 1612 | void Image::extractSpectrum(Cube &cube, long pixel) |
---|
| 1613 | { |
---|
[528] | 1614 | /// @details |
---|
| 1615 | /// A function to extract a 1-D spectrum from a Cube class |
---|
| 1616 | /// The spectrum extracted is the one lying in the spatial pixel referenced |
---|
| 1617 | /// by the second argument. |
---|
| 1618 | /// The extracted spectrum is stored in the pixel array Image::array. |
---|
| 1619 | /// \param cube The Cube containing the pixel values, from which the spectrum is extracted. |
---|
| 1620 | /// \param pixel The spatial pixel that contains the desired spectrum. |
---|
| 1621 | |
---|
[378] | 1622 | long zdim = cube.getDimZ(); |
---|
| 1623 | long spatSize = cube.getDimX()*cube.getDimY(); |
---|
| 1624 | if((pixel<0)||(pixel>=spatSize)) |
---|
| 1625 | duchampError("Image::extractSpectrum", |
---|
| 1626 | "Requested spatial pixel outside allowed range. Cannot save."); |
---|
| 1627 | else if(zdim != this->numPixels) |
---|
| 1628 | duchampError("Image::extractSpectrum", |
---|
| 1629 | "Input array different size to existing array. Cannot save."); |
---|
| 1630 | else { |
---|
[444] | 1631 | if(this->numPixels>0 && this->arrayAllocated) delete [] array; |
---|
[378] | 1632 | this->numPixels = zdim; |
---|
[444] | 1633 | if(this->numPixels>0){ |
---|
| 1634 | this->array = new float[zdim]; |
---|
| 1635 | this->arrayAllocated = true; |
---|
| 1636 | for(int z=0;z<zdim;z++) |
---|
| 1637 | this->array[z] = cube.getPixValue(z*spatSize + pixel); |
---|
| 1638 | } |
---|
[378] | 1639 | } |
---|
[258] | 1640 | } |
---|
[378] | 1641 | //-------------------------------------------------------------------- |
---|
[220] | 1642 | |
---|
[378] | 1643 | void Image::extractImage(float *Array, long *dim, long channel) |
---|
| 1644 | { |
---|
[528] | 1645 | /// @details |
---|
| 1646 | /// A function to extract a 2-D image from a 3-D array. |
---|
| 1647 | /// The array is assumed to be 3-D with the third dimension the spectral one. |
---|
| 1648 | /// The dimensions of the array are in the dim[] array. |
---|
| 1649 | /// The image extracted is the one lying in the channel referenced |
---|
| 1650 | /// by the third argument. |
---|
| 1651 | /// The extracted image is stored in the pixel array Image::array. |
---|
| 1652 | /// \param Array The array containing the pixel values, from which the image is extracted. |
---|
| 1653 | /// \param dim The array of dimension values. |
---|
| 1654 | /// \param channel The spectral channel that contains the desired image. |
---|
[258] | 1655 | |
---|
[378] | 1656 | long spatSize = dim[0]*dim[1]; |
---|
| 1657 | if((channel<0)||(channel>=dim[2])) |
---|
| 1658 | duchampError("Image::extractImage", |
---|
| 1659 | "Requested channel outside allowed range. Cannot save."); |
---|
| 1660 | else if(spatSize != this->numPixels) |
---|
| 1661 | duchampError("Image::extractImage", |
---|
| 1662 | "Input array different size to existing array. Cannot save."); |
---|
| 1663 | else { |
---|
[444] | 1664 | if(this->numPixels>0 && this->arrayAllocated) delete [] array; |
---|
[378] | 1665 | this->numPixels = spatSize; |
---|
[444] | 1666 | if(this->numPixels>0){ |
---|
| 1667 | this->array = new float[spatSize]; |
---|
| 1668 | this->arrayAllocated = true; |
---|
| 1669 | for(int npix=0; npix<spatSize; npix++) |
---|
| 1670 | this->array[npix] = Array[channel*spatSize + npix]; |
---|
| 1671 | } |
---|
[378] | 1672 | } |
---|
[220] | 1673 | } |
---|
[378] | 1674 | //-------------------------------------------------------------------- |
---|
[220] | 1675 | |
---|
[378] | 1676 | void Image::extractImage(Cube &cube, long channel) |
---|
| 1677 | { |
---|
[528] | 1678 | /// @details |
---|
| 1679 | /// A function to extract a 2-D image from Cube class. |
---|
| 1680 | /// The image extracted is the one lying in the channel referenced |
---|
| 1681 | /// by the second argument. |
---|
| 1682 | /// The extracted image is stored in the pixel array Image::array. |
---|
| 1683 | /// \param cube The Cube containing the pixel values, from which the image is extracted. |
---|
| 1684 | /// \param channel The spectral channel that contains the desired image. |
---|
| 1685 | |
---|
[378] | 1686 | long spatSize = cube.getDimX()*cube.getDimY(); |
---|
| 1687 | if((channel<0)||(channel>=cube.getDimZ())) |
---|
| 1688 | duchampError("Image::extractImage", |
---|
| 1689 | "Requested channel outside allowed range. Cannot save."); |
---|
| 1690 | else if(spatSize != this->numPixels) |
---|
| 1691 | duchampError("Image::extractImage", |
---|
| 1692 | "Input array different size to existing array. Cannot save."); |
---|
| 1693 | else { |
---|
[444] | 1694 | if(this->numPixels>0 && this->arrayAllocated) delete [] array; |
---|
[378] | 1695 | this->numPixels = spatSize; |
---|
[444] | 1696 | if(this->numPixels>0){ |
---|
| 1697 | this->array = new float[spatSize]; |
---|
| 1698 | this->arrayAllocated = true; |
---|
| 1699 | for(int npix=0; npix<spatSize; npix++) |
---|
| 1700 | this->array[npix] = cube.getPixValue(channel*spatSize + npix); |
---|
| 1701 | } |
---|
[378] | 1702 | } |
---|
[258] | 1703 | } |
---|
[378] | 1704 | //-------------------------------------------------------------------- |
---|
[220] | 1705 | |
---|
[378] | 1706 | void Image::removeMW() |
---|
| 1707 | { |
---|
[528] | 1708 | /// @details |
---|
| 1709 | /// A function to remove the Milky Way range of channels from a 1-D spectrum. |
---|
| 1710 | /// The array in this Image is assumed to be 1-D, with only the first axisDim |
---|
| 1711 | /// equal to 1. |
---|
| 1712 | /// The values of the MW channels are set to 0, unless they are BLANK. |
---|
| 1713 | |
---|
[378] | 1714 | if(this->par.getFlagMW() && (this->axisDim[1]==1) ){ |
---|
| 1715 | for(int z=0;z<this->axisDim[0];z++){ |
---|
| 1716 | if(!this->isBlank(z) && this->par.isInMW(z)) this->array[z]=0.; |
---|
| 1717 | } |
---|
[220] | 1718 | } |
---|
| 1719 | } |
---|
[582] | 1720 | //-------------------------------------------------------------------- |
---|
[378] | 1721 | |
---|
[582] | 1722 | std::vector<Object2D> Image::findSources2D() |
---|
| 1723 | { |
---|
| 1724 | std::vector<bool> thresholdedArray(this->axisDim[0]*this->axisDim[1]); |
---|
| 1725 | for(int posY=0;posY<this->axisDim[1];posY++){ |
---|
| 1726 | for(int posX=0;posX<this->axisDim[0];posX++){ |
---|
| 1727 | int loc = posX + this->axisDim[0]*posY; |
---|
| 1728 | thresholdedArray[loc] = this->isDetection(posX,posY); |
---|
| 1729 | } |
---|
| 1730 | } |
---|
| 1731 | return lutz_detect(thresholdedArray, this->axisDim[0], this->axisDim[1], this->minSize); |
---|
| 1732 | } |
---|
| 1733 | |
---|
| 1734 | std::vector<Scan> Image::findSources1D() |
---|
| 1735 | { |
---|
| 1736 | std::vector<bool> thresholdedArray(this->axisDim[0]); |
---|
| 1737 | for(int posX=0;posX<this->axisDim[0];posX++){ |
---|
| 1738 | thresholdedArray[posX] = this->isDetection(posX,0); |
---|
| 1739 | } |
---|
| 1740 | return spectrumDetect(thresholdedArray, this->axisDim[0], this->minSize); |
---|
| 1741 | } |
---|
| 1742 | |
---|
| 1743 | |
---|
[659] | 1744 | std::vector< std::vector<PixelInfo::Voxel> > Cube::getObjVoxList() |
---|
| 1745 | { |
---|
| 1746 | |
---|
| 1747 | std::vector< std::vector<PixelInfo::Voxel> > biglist; |
---|
| 1748 | |
---|
| 1749 | std::vector<Detection>::iterator obj; |
---|
| 1750 | for(obj=this->objectList->begin(); obj<this->objectList->end(); obj++) { |
---|
| 1751 | |
---|
| 1752 | Cube *subcube = new Cube; |
---|
| 1753 | subcube->pars() = this->par; |
---|
| 1754 | subcube->pars().setVerbosity(false); |
---|
| 1755 | subcube->pars().setFlagSubsection(true); |
---|
| 1756 | duchamp::Section sec = obj->getBoundingSection(); |
---|
| 1757 | subcube->pars().setSubsection( sec.getSection() ); |
---|
[700] | 1758 | if(subcube->pars().verifySubsection() == FAILURE) |
---|
| 1759 | duchampError("get object voxel list","Unable to verify the subsection - something's wrong!"); |
---|
| 1760 | if(subcube->getCube() == FAILURE) |
---|
| 1761 | duchampError("get object voxel list","Unable to read the FITS file - something's wrong!"); |
---|
[659] | 1762 | std::vector<PixelInfo::Voxel> voxlist = obj->getPixelSet(); |
---|
| 1763 | std::vector<PixelInfo::Voxel>::iterator vox; |
---|
| 1764 | for(vox=voxlist.begin(); vox<voxlist.end(); vox++){ |
---|
| 1765 | long pix = (vox->getX()-subcube->pars().getXOffset()) + |
---|
| 1766 | subcube->getDimX()*(vox->getY()-subcube->pars().getYOffset()) + |
---|
| 1767 | subcube->getDimX()*subcube->getDimY()*(vox->getZ()-subcube->pars().getZOffset()); |
---|
| 1768 | vox->setF( subcube->getPixValue(pix) ); |
---|
| 1769 | } |
---|
| 1770 | biglist.push_back(voxlist); |
---|
| 1771 | delete subcube; |
---|
| 1772 | |
---|
| 1773 | } |
---|
| 1774 | |
---|
| 1775 | return biglist; |
---|
| 1776 | |
---|
| 1777 | } |
---|
| 1778 | |
---|
[220] | 1779 | } |
---|