source: trunk/src/ATrous/atrous_1d_reconstruct.cc @ 913

Last change on this file since 913 was 913, checked in by MatthewWhiting, 12 years ago

A large swathe of changes aimed at improving warning/error/exception handling. Now make use of macros and streams. Also, there is now a distinction between DUCHAMPERROR and DUCHAMPTHROW.

File size: 7.4 KB
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1// -----------------------------------------------------------------------
2// atrous_1d_reconstruct.cc: 1-dimensional wavelet reconstruction.
3// -----------------------------------------------------------------------
4// Copyright (C) 2006, Matthew Whiting, ATNF
5//
6// This program is free software; you can redistribute it and/or modify it
7// under the terms of the GNU General Public License as published by the
8// Free Software Foundation; either version 2 of the License, or (at your
9// option) any later version.
10//
11// Duchamp is distributed in the hope that it will be useful, but WITHOUT
12// ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or
13// FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public License
14// for more details.
15//
16// You should have received a copy of the GNU General Public License
17// along with Duchamp; if not, write to the Free Software Foundation,
18// Inc., 59 Temple Place, Suite 330, Boston, MA 02111-1307, USA
19//
20// Correspondence concerning Duchamp may be directed to:
21//    Internet email: Matthew.Whiting [at] atnf.csiro.au
22//    Postal address: Dr. Matthew Whiting
23//                    Australia Telescope National Facility, CSIRO
24//                    PO Box 76
25//                    Epping NSW 1710
26//                    AUSTRALIA
27// -----------------------------------------------------------------------
28#include <iostream>
29#include <sstream>
30#include <iomanip>
31#include <math.h>
32#include <duchamp/duchamp.hh>
33#include <duchamp/param.hh>
34#include <duchamp/Utils/utils.hh>
35#include <duchamp/Utils/feedback.hh>
36#include <duchamp/ATrous/atrous.hh>
37#include <duchamp/ATrous/filter.hh>
38#include <duchamp/Utils/Statistics.hh>
39using Statistics::madfmToSigma;
40
41namespace duchamp
42{
43
44  void atrous1DReconstruct(size_t &xdim, float *&input, float *&output, Param &par)
45  {
46    ///  A routine that uses the a trous wavelet method to reconstruct a
47    ///   1-dimensional spectrum.
48    ///  The Param object "par" contains all necessary info about the filter and
49    ///   reconstruction parameters.
50    ///
51    ///  If all pixels are BLANK (and we are testing for BLANKs), the
52    ///  reconstruction will simply give BLANKs back, so we return the
53    ///  input array as the output array.
54    ///
55    ///  \param xdim The length of the spectrum.
56    ///  \param input The input spectrum.
57    ///  \param output The returned reconstructed spectrum. This array needs to
58    ///    be declared beforehand.
59    ///  \param par The Param set.
60
61    const float SNR_THRESH=par.getAtrousCut();
62    const unsigned int MIN_SCALE=par.getMinScale();
63    static bool firstTime = true;
64
65    unsigned int numScales = par.filter().getNumScales(xdim);
66    unsigned int maxScale = par.getMaxScale();
67    if((maxScale>0)&&(maxScale<=numScales))
68      maxScale = std::min(maxScale,numScales);
69    else{
70      if((firstTime)&&(maxScale!=0)){
71        firstTime=false;
72        DUCHAMPWARN("Reading parameters","The requested value of the parameter scaleMax, \"" << maxScale << "\" is outside the allowed range (1-"<< numScales <<") -- setting to " << numScales);
73      }
74      maxScale = numScales;
75    }
76    double *sigmaFactors = new double[numScales+1];
77    for(size_t i=0;i<=numScales;i++){
78      if(i<=par.filter().maxFactor(1))
79        sigmaFactors[i] = par.filter().sigmaFactor(1,i);
80      else sigmaFactors[i] = sigmaFactors[i-1] / sqrt(2.);
81    }
82
83    float mean,originalSigma,oldsigma,newsigma;
84    bool *isGood = new bool[xdim];
85    size_t goodSize=0;
86    for(size_t pos=0;pos<xdim;pos++) {
87      isGood[pos] = !par.isBlank(input[pos]);
88      if(isGood[pos]) goodSize++;
89    }
90
91    if(goodSize == 0){
92      // There are no good pixels -- everything is BLANK for some reason.
93      // Return the input array as the output.
94
95      for(size_t pos=0;pos<xdim; pos++) output[pos] = input[pos];
96
97    }
98    else{
99      // Otherwise, all is good, and we continue.
100
101
102      float *coeffs = new float[xdim];
103      float *wavelet = new float[xdim];
104      // float *residual = new float[xdim];
105
106      for(size_t pos=0;pos<xdim;pos++) output[pos]=0.;
107
108      int filterHW = par.filter().width()/2;
109      double *filter = new double[par.filter().width()];
110      for(size_t i=0;i<par.filter().width();i++) filter[i] = par.filter().coeff(i);
111
112
113      // No trimming done in 1D case.
114
115      int iteration=0;
116      newsigma = 1.e9;
117      do{
118        if(par.isVerbose()) {
119          std::cout << "Iteration #"<<++iteration<<":";
120          printSpace(13);
121        }
122        // first, get the value of oldsigma and set it to the previous
123        //   newsigma value
124        oldsigma = newsigma;
125        // all other times round, we are transforming the residual array
126        for(size_t i=0;i<xdim;i++)  coeffs[i] = input[i] - output[i];
127   
128        // findMedianStats(input,xdim,isGood,originalMean,originalSigma);
129        // originalSigma = madfmToSigma(originalSigma);
130        if(par.getFlagRobustStats())
131          originalSigma = madfmToSigma(findMADFM(input,isGood,xdim));
132        else
133          originalSigma = findStddev<float>(input,isGood,xdim);
134
135        int spacing = 1;
136        for(unsigned int scale = 1; scale<=numScales; scale++){
137
138          if(par.isVerbose()) {
139            std::cout << "Scale " << std::setw(2) << scale
140                      << " /"     << std::setw(2) << numScales <<std::flush;
141          }
142
143          for(size_t xpos = 0; xpos<xdim; xpos++){
144            // loops over each pixel in the image
145
146            wavelet[xpos] = coeffs[xpos];
147       
148            if(!isGood[xpos] )  wavelet[xpos] = 0.;
149            else{
150
151              for(int xoffset=-filterHW; xoffset<=filterHW; xoffset++){
152                long x = xpos + spacing*xoffset;
153
154                while((x<0)||(x>=long(xdim))){
155                  // boundary conditions are reflection.
156                  if(x<0) x = 0 - x;
157                  else if(x>=long(xdim)) x = 2*(xdim-1) - x;
158                }
159
160                size_t filterpos = (xoffset+filterHW);
161                size_t oldpos = x;
162
163                if(isGood[oldpos])
164                  wavelet[xpos] -= filter[filterpos]*coeffs[oldpos];
165             
166              } //-> end of xoffset loop
167            } //-> end of else{ ( from if(!isGood[xpos])  )
168           
169          } //-> end of xpos loop
170
171          // Need to do this after we've done *all* the convolving
172          for(size_t pos=0;pos<xdim;pos++) coeffs[pos] = coeffs[pos] - wavelet[pos];
173
174          // Have found wavelet coeffs for this scale -- now threshold
175          if(scale>=MIN_SCALE){
176            //      findMedianStats(wavelet,xdim,isGood,mean,sigma);
177            if(par.getFlagRobustStats())
178              mean = findMedian<float>(wavelet,isGood,xdim);
179            else
180              mean = findMean<float>(wavelet,isGood,xdim);
181       
182            for(size_t pos=0;pos<xdim;pos++){
183              // preserve the Blank pixel values in the output.
184              if(!isGood[pos]) output[pos] = input[pos];
185              else if( fabs(wavelet[pos]) >
186                       (mean+SNR_THRESH*originalSigma*sigmaFactors[scale]) )
187                output[pos] += wavelet[pos];
188            }
189          }
190 
191          spacing *= 2;
192
193        } //-> end of scale loop
194
195        // Only add the final smoothed array if we are doing *all* the scales.
196        if(numScales == par.filter().getNumScales(xdim))
197          for(size_t pos=0;pos<xdim;pos++)
198            if(isGood[pos]) output[pos] += coeffs[pos];
199
200        // for(size_t pos=0;pos<xdim;pos++) residual[pos]=input[pos]-output[pos];
201        // findMedianStats(residual,xdim,isGood,mean,newsigma);
202        // newsigma = madfmToSigma(newsigma);
203        if(par.getFlagRobustStats())
204          newsigma = madfmToSigma(findMADFMDiff(input,output,isGood,xdim));
205        else
206          newsigma = findStddevDiff<float>(input,output,isGood,xdim);
207
208        if(par.isVerbose()) printBackSpace(26);
209
210      } while( (iteration==1) ||
211               (fabs(oldsigma-newsigma)/newsigma > reconTolerance) );
212
213      if(par.isVerbose()) std::cout << "Completed "<<iteration<<" iterations. ";
214
215      delete [] filter;
216      // delete [] residual;
217      delete [] wavelet;
218      delete [] coeffs;
219
220    }
221
222    delete [] isGood;
223    delete [] sigmaFactors;
224  }
225
226}
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