source: tags/release-1.1.12/docs/hints.tex

Last change on this file was 303, checked in by Matthew Whiting, 17 years ago
  • Update the Outputs chapter to mention the use of F_tot.
  • Fixed comments in pgplot_related.c
  • Added distribution text to tex files.
File size: 7.0 KB
Line 
1% -----------------------------------------------------------------------
2% hints.tex: Section giving some tips & hints on how Duchamp is best
3%            used.
4% -----------------------------------------------------------------------
5% Copyright (C) 2006, Matthew Whiting, ATNF
6%
7% This program is free software; you can redistribute it and/or modify it
8% under the terms of the GNU General Public License as published by the
9% Free Software Foundation; either version 2 of the License, or (at your
10% option) any later version.
11%
12% Duchamp is distributed in the hope that it will be useful, but WITHOUT
13% ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or
14% FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public License
15% for more details.
16%
17% You should have received a copy of the GNU General Public License
18% along with Duchamp; if not, write to the Free Software Foundation,
19% Inc., 59 Temple Place, Suite 330, Boston, MA 02111-1307, USA
20%
21% Correspondence concerning Duchamp may be directed to:
22%    Internet email: Matthew.Whiting [at] atnf.csiro.au
23%    Postal address: Dr. Matthew Whiting
24%                    Australia Telescope National Facility, CSIRO
25%                    PO Box 76
26%                    Epping NSW 1710
27%                    AUSTRALIA
28% -----------------------------------------------------------------------
29\secA{Notes and hints on the use of \duchamp}
30\label{sec-notes}
31
32In using \duchamp, the user has to make a number of decisions about
33the way the program runs. This section is designed to give the user
34some idea about what to choose.
35
36The main choice is whether to alter the cube to try and enhance the
37detectability of objects, by either smoothing or reconstructing via
38the \atrous method. The main benefits of both methods are the marked
39reduction in the noise level, leading to regularly-shaped detections,
40and good reliability for faint sources.
41
42The main drawback with the \atrous method is the long execution time:
43to reconstruct a $170\times160\times1024$ (\hipass) cube often
44requires three iterations and takes about 20-25 minutes to run
45completely. Note that this is for the more complete three-dimensional
46reconstruction: using \texttt{reconDim = 1} makes the reconstruction
47quicker (the full program then takes less than 5 minutes), but it is
48still the largest part of the time.
49
50The smoothing procedure is computationally simpler, and thus quicker,
51than the reconstruction. The spectral Hanning method adds only a very
52small overhead on the execution, and the spatial Gaussian method,
53while taking longer, will be done (for the above example) in less than
542 minutes. Note that these times will depend on the size of the
55filter/kernel used: a larger filter means more calculations.
56
57The searching part of the procedure is much quicker: searching an
58un-reconstructed cube leads to execution times of less than a
59minute. Alternatively, using the ability to read in previously-saved
60reconstructed arrays makes running the reconstruction more than once a
61more feasible prospect.
62
63On the positive side, the shape of the detections in a cube that has
64been reconstructed or smoothed will be much more regular and smooth --
65the ragged edges that objects in the raw cube possess are smoothed by
66the removal of most of the noise. This enables better determination of
67the shapes and characteristics of objects.
68
69While the time overhead is larger for the reconstruction case, it will
70potentially provide a better recovery of real sources than the
71smoothing case. This is because it probes the full range of scales
72present in the cube (or spectral domain), rather than the specific
73scale determined by the Hanning filter or Gaussian kernel used in the
74smoothing.
75
76When considering the reconstruction method, note that the 2D
77reconstruction (\texttt{reconDim = 2}) can be susceptible to edge
78effects. If the valid area in the cube (\ie the part that is not
79BLANK) has non-rectangular edges, the convolution can produce
80artefacts in the reconstruction that mimic the edges and can lead
81(depending on the selection threshold) to some spurious
82sources. Caution is advised with such data -- the user is advised to
83check carefully the reconstructed cube for the presence of such
84artefacts. Note, however, that the 1- and 3-dimensional
85reconstructions are \emph{not} susceptible in the same way, since the
86spectral direction does not generally exhibit these BLANK edges, and
87so we recommend the use of either of these.
88
89If one chooses the reconstruction method, a further decision is
90required on the signal-to-noise cutoff used in determining acceptable
91wavelet coefficients. A larger value will remove more noise from the
92cube, at the expense of losing fainter sources, while a smaller value
93will include more noise, which may produce spurious detections, but
94will be more sensitive to faint sources. Values of less than about
95$3\sigma$ tend to not reduce the noise a great deal and can lead to
96many spurious sources (this depends, of course on the cube itself).
97
98The smoothing options have less parameters to consider: basically just
99the size of the smoothing function or kernel. Spectrally smoothing
100with a Hanning filter of width 3 (the smallest possible) is very
101efficient at removing spurious one-channel objects that may result
102just from statistical fluctuations of the noise. One may want to use
103larger widths or kernels of larger size to look for features of a
104particular scale in the cube.
105
106When it comes to searching, the FDR method produces more reliable
107results than simple sigma-clipping, particularly in the absence of
108reconstruction.  However, it does not work in exactly the way one
109would expect for a given value of \texttt{alpha}. For instance,
110setting fairly liberal values of \texttt{alpha} (say, 0.1) will often
111lead to a much smaller fraction of false detections (\ie much less
112than 10\%). This is the effect of the merging algorithms, that combine
113the sources after the detection stage, and reject detections not
114meeting the minimum pixel or channel requirements.  It is thus better
115to aim for larger \texttt{alpha} values than those derived from a
116straight conversion of the desired false detection rate.
117
118If the FDR method is not used, caution is required when choosing the
119S/N cutoff. Typical cubes have very large numbers of pixels, so even
120an apparently large cutoff will still result in a not-insignificant
121number of detections simply due to random fluctuations of the noise
122background. For instance, a $4\sigma$ threshold on a cube of Gaussian
123noise of size $100\times100\times1024$ will result in $\sim340$
124detections. This is where the minimum channel and pixel requirements
125are important in rejecting spurious detections.
126
127Finally, as \duchamp is still undergoing development, there are some
128elements that are not fully developed. In particular, it is not as
129clever as I would like at avoiding interference. The ability to place
130requirements on the minimum number of channels and pixels partially
131circumvents this problem, but work is being done to make \duchamp
132smarter at rejecting signals that are clearly (to a human eye at
133least) interference. See the following section for further
134improvements that are planned.
Note: See TracBrowser for help on using the repository browser.