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2% intro.tex: Introduction, and guide to what Duchamp is doing.
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4% Copyright (C) 2006, Matthew Whiting, ATNF
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28\secA{Introduction and getting going quickly}
29
30\secB{About Duchamp}
31
32This document provides a user's guide to \duchamp, an object-finder
33for use on spectral-line data cubes. The basic execution of \duchamp
34is to read in a FITS data cube, find sources in the cube, and produce
35a text file of positions, velocities and fluxes of the detections, as
36well as a postscript file of the spectra of each detection.
37
38\duchamp has been designed to search for objects in particular sorts
39of data: those with relatively small, isolated objects in a large
40amount of background or noise. Examples of such data are extragalactic
41\hi surveys, or maser surveys. \duchamp searches for groups of
42connected voxels (or pixels) that are all above some flux
43threshold. No assumption is made as to the shape of detections, and
44the only size constraints applied are those specified by the user.
45
46\secB{What to do}
47
48So, you have a FITS cube, and you want to find the sources in it. What
49do you do? First, you need to get \duchamp: there are instructions in
50Appendix~\ref{app-install} for obtaining and installing it. Once you
51have it running, the first step is to make an input file that contains
52the list of parameters. Brief and detailed examples are shown in
53Appendix~\ref{app-input}. This file provides the input file name, the
54various output files, and defines various parameters that control the
55execution.
56
57The standard way to run \duchamp is by the command
58\begin{quote}
59{\footnotesize
60\texttt{> Duchamp -p [parameter file]}
61}
62\end{quote}
63replacing \texttt{[parameter file]} with the name of the file listing
64the parameters.
65
66An even easier way is to use the default values for all parameters
67(these are given in Appendix~\ref{app-param} and in the file
68\texttt{InputComplete} included in the distribution directory) and use
69the syntax
70\begin{quote}
71{\footnotesize
72\texttt{> Duchamp -f [FITS file]}
73}
74\end{quote}
75where \texttt{[FITS file]} is the file you wish to search.
76
77The default action includes displaying a map of detected objects in a
78PGPLOT X-window. This can be disabled by setting the parameter
79\texttt{flagXOutput = false} or using the \texttt{-x} command-line
80option, as in
81\begin{quote}
82{\footnotesize
83\texttt{> Duchamp -x -p [parameter file]}
84}
85\end{quote}
86and similarly for the \texttt{-f} case.
87
88Once a FITS file and parameters have been set, the program will then
89work away and give you the list of detections and their spectra. The
90program execution is summarised below, and detailed in
91\S\ref{sec-flow}. Information on inputs is in \S\ref{sec-param} and
92Appendix~\ref{app-param}, and descriptions of the output is in
93\S\ref{sec-output}.
94
95\secB{Guide to terminology and conventions}
96
97First, a brief note on the use of terminology in this guide. \duchamp
98is designed to work on FITS ``cubes''. These are FITS\footnote{FITS is
99the Flexible Image Transport System -- see \citet{hanisch01} or
100websites such as
101\href{http://fits.cv.nrao.edu/FITS.html}{http://fits.cv.nrao.edu/FITS.html}
102for details.} image arrays with (at least) three dimensions. They
103are assumed to have the following form: the first two dimensions
104(referred to as $x$ and $y$) are spatial directions (that is, relating
105to the position on the sky -- often, but not necessarily,
106corresponding to Equatorial or Galactic coordinates), while the third
107dimension, $z$, is the spectral direction, which can correspond to
108frequency, wavelength, or velocity. The three dimensional analogue of
109pixels are ``voxels'', or volume cells -- a voxel is defined by a
110unique $(x,y,z)$ location and has a single value of flux, intensity
111or brightness (or something equivalent) associated with it.
112
113Sometimes, some pixels in a FITS file are labelled as BLANK -- that
114is, they are given a nominal value, defined by FITS header keywords
115\textsc{blank, bscale, \& bzero}, that marks them as not having a flux
116value. These are often used to pad a cube out so that it has a
117rectangular spatial shape. \duchamp has the ability to avoid these:
118see \S\ref{sec-blank}.
119
120Note that it is possible for the FITS file to have more than three
121dimensions (for instance, there could be a fourth dimension
122representing a Stokes parameter). Only the two spatial dimensions and
123the spectral dimension are read into the array of pixel values that is
124searched for objects. All other dimensions are ignored\footnote{This
125actually means that the first pixel only of that axis is used, and the
126array is read by the \texttt{fits\_read\_subsetnull} command from the
127\textsc{cfitsio} library.}. Herein, we discuss the data in terms of
128the three basic dimensions, but you should be aware it is possible for
129the FITS file to have more than three. Note that the order of the
130dimensions in the FITS file does not matter.
131
132With this setup, each spatial pixel (a given $(x,y)$ coordinate) can
133be said to be a single spectrum, while a slice through the cube
134perpendicular to the spectral direction at a given $z$-value is a
135single channel, with the 2-D image in that channel called a channel
136map.
137
138Detection involves locating a contiguous group of voxels with fluxes
139above a certain threshold. \duchamp makes no assumptions as to the
140size or shape of the detected features, other than having
141user-selected minimum size criteria. Features that are detected are
142assumed to be positive. The user can choose to search for negative
143features by setting an input parameter -- this inverts the cube prior
144to the search (see \S\ref{sec-detection} for details).
145
146Finally, note that it is possible to run \duchamp on a
147two-dimensional image (\ie one with no frequency or velocity
148information), or indeed a one-dimensional array, and many of the
149features of the program will work fine. The focus, however, is on
150object detection in three dimensions, one of which is a spectral
151dimension.
152
153\secB{A summary of the execution steps}
154
155The basic flow of the program is summarised here -- all steps are
156discussed in more detail in the following sections.
157\begin{enumerate}
158\item The necessary parameters are recorded.
159
160  How this is done depends on the way the program is run from the
161  command line. If the \texttt{-p} option is used, the parameter file
162  given on the command line is read in, and the parameters therein are
163  read. All other parameters are given their default values (listed in
164  Appendix~\ref{app-param}).
165
166  If the \texttt{-f} option is used, all parameters are assigned their
167  default values.
168
169\item The FITS image is located and read in to memory.
170
171  The file given is assumed to be a valid FITS file. As discussed
172  above, it can have any number of dimensions, but \duchamp only
173  reads in the two spatial and the one spectral dimensions. A subset
174  of the FITS array can be given (see \S\ref{sec-input} for details).
175
176\item If requested, a FITS file containing a previously reconstructed
177  or smoothed array is read in.
178
179  When a cube is either smoothed or reconstructed with the \atrous
180  wavelet method, the result can be saved to a FITS file, so that
181  subsequent runs of \duchamp can read it in to save having to re-do
182  the calculations (as they can be relatively time-intensive).
183
184\item \label{step-blank} If requested, BLANK pixels are trimmed from
185  the edges, and the baseline of each spectrum is removed.
186
187  BLANK pixels, while they are ignored by all calculations in
188  \duchamp, do increase the size in memory of the array above that
189  absolutely needed. This step trims them from the spatial edges,
190  recording the amount trimmed so that they can be added back in
191  later.
192
193  A spectral baseline (or bandpass) can also be removed at this point
194  as well. This may be necessary if there is a ripple or other
195  large-scale feature present that will hinder detection of faint
196  sources.
197
198\item If the reconstruction method is requested, and the reconstructed
199  array has not been read in at Step 3 above, the cube is
200  reconstructed using the \atrous wavelet method.
201
202  This step uses the \atrous method to determine the amount of
203  structure present at various scales. A simple thresholding technique
204  then removes random noise from the cube, leaving the significant
205  signal. This process can greatly reduce the noise level in the cube,
206  enhancing the detectability of sources.
207
208\item Alternatively (and if requested), the cube is smoothed, either
209  spectrally or spatially.
210
211  This step presents two options. The first considers each spectrum
212  individually, and convolves it with a Hanning filter (with width
213  chosen by the user). The second considers each channel map
214  separately, and smoothes it with a Gaussian kernel of size and shape
215  chosen by the user. This step can help to reduce the amount of noise
216  visible in the cube and enhance fainter sources.
217
218\item A threshold for the cube is then calculated, based on the pixel
219  statistics (unless a threshold is manually specified by the user).
220
221  The threshold can either be chosen as a simple $n\sigma$ threshold
222  (\ie a certain number of standard deviations above the mean), or
223  calculated via the ``False Discovery Rate'' method. Alternatively,
224  the threshold can be specified as a simple flux value, without care
225  as to the statistical significance (\eg ``I want every source
226  brighter than 10mJy'').
227
228  By default, the full cube is used for the statistics calculation,
229  although the user can nominate a subsection of the cube to be used
230  instead.
231
232\item Searching for objects then takes place, using the requested
233  thresholding method.
234
235  The cube is searched one channel-map at a time. Detections are
236  compared to already detected objects and either combined with a
237  neighbouring one or added to the end of the list.
238
239\item The list of objects is condensed by merging neighbouring objects
240  and removing those deemed unacceptable.
241
242  While some merging has been done in the previous step, this process
243  is a much more rigorous comparison of each object with every other
244  one. If a pair of objects lie within requested limits, they are
245  combined.
246
247  After the merging is done, the list is culled (although see comment
248  for the next step). There are certain criteria the user can specify
249  that objects must meet: minimum numbers of spatial pixels and
250  spectral channels, and minimum separations between neighbouring
251  objects. Those that do not meet these criteria are deleted
252  from the list.
253
254\item If requested, the objects are ``grown'' down to a lower
255  threshold, and then the merging step is done a second time.
256
257  In this case, each object has pixels in its neighbourhood examined,
258  and if they are above a secondary threshold, they are added to the
259  object. The merging process is done a second time in case two
260  objects have grown over the top of one another. Note that the
261  rejection part of the previous step is not done until the end of the
262  second merging process.
263
264\item The baselines and trimmed pixels are replaced prior to output.
265
266  This is just the inverse of step~\#\ref{step-blank}.
267
268\item The details of the detections are written to screen and to the
269  requested output file.
270
271  Crucial properties of each detection are provided, showing its
272  location, extent, and flux. These are presented in both pixel
273  coordinates and world coordinates (\eg sky position and
274  velocity). Any warning flags are also printed, showing detections to
275  be wary of. Alternative output options are available, such as a
276  VOTable or a Karma annotation file.
277
278\item Maps showing the spatial location of the detections are written.
279
280  These are 2-dimensional maps, showing where each detection lies on
281  the spatial coverage of the cube. This is provided as an aid to the
282  user so that a quick idea of the distribution of object positions
283  can be gained \eg are all the detections on the edge?
284
285  Two maps are provided: one is a 0th moment map, showing the 0th
286  moment (\ie a map of the integrated flux) of each detection in its
287  appropriate position, while the second is a ``detection map'',
288  showing the number of times each spatial pixel was detected in the
289  searching routines (including those pixels rejected at step 9 and so
290  not in any of the final detections).
291
292  These maps are written to postscript files, and the 0th moment map
293  can also be displayed in a PGPLOT X-window.
294
295\item The integrated or peak spectra of each detection are written to a
296  postscript file.
297
298  The spectral equivalent of the maps -- what is the spectral profile
299  of each detection? Also provided here are basic information for each
300  object (a summary of the information in the results file), as well
301  as a 0th moment map of the detection.
302
303\item If requested, the reconstructed or smoothed array can be written
304  to a new FITS file.
305
306  If either of these procedures were done, the resulting array can be
307  saved as a FITS file for later use. The FITS header will be the same
308  as the input file, with a few additional keywords to identify the
309  file.
310
311\end{enumerate}
312
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