Mercurial > hg > octave-image
view inst/entropyfilt.m @ 892:a2140b980079
iptcheckconn: implement in C++ as static method for connectivity.
* iptcheckconn.m: file removed; help text and tests reused for C++.
* conndef.cc: implement two new connectivity::validate() methods and
the iptcheckconn function for Octave as caller to those methods.
* conndef.h: define the connectivity::validate() static methods.
* COPYING
author | Carnë Draug <carandraug@octave.org> |
---|---|
date | Wed, 01 Oct 2014 20:22:37 +0100 |
parents | 0d5958711749 |
children |
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## Copyright (C) 2008 Søren Hauberg <soren@hauberg.org> ## ## This program is free software; you can redistribute it and/or modify it under ## the terms of the GNU General Public License as published by the Free Software ## Foundation; either version 3 of the License, or (at your option) any later ## version. ## ## This program is distributed in the hope that it will be useful, but WITHOUT ## ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or ## FITNESS FOR A PARTICULAR PURPOSE. See the GNU General Public License for more ## details. ## ## You should have received a copy of the GNU General Public License along with ## this program; if not, see <http://www.gnu.org/licenses/>. ## -*- texinfo -*- ## @deftypefn {Function File} {@var{E} =} entropyfilt (@var{im}) ## @deftypefnx{Function File} {@var{E} =} entropyfilt (@var{im}, @var{domain}) ## @deftypefnx{Function File} {@var{E} =} entropyfilt (@var{im}, @var{domain}, @var{padding}, @dots{}) ## Computes the local entropy in a neighbourhood around each pixel in an image. ## ## The entropy of the elements of the neighbourhood is computed as ## ## @example ## @var{E} = -sum (@var{P} .* log2 (@var{P}) ## @end example ## ## where @var{P} is the distribution of the elements of @var{im}. The distribution ## is approximated using a histogram with @var{nbins} cells. If @var{im} is ## @code{logical} then two cells are used. For other classes 256 cells ## are used. ## ## When the entropy is computed, zero-valued cells of the histogram are ignored. ## ## The neighbourhood is defined by the @var{domain} binary mask. Elements of the ## mask with a non-zero value are considered part of the neighbourhood. By default ## a 9 by 9 matrix containing only non-zero values is used. ## ## At the border of the image, extrapolation is used. By default symmetric ## extrapolation is used, but any method supported by the @code{padarray} function ## can be used. Since extrapolation is used, one can expect a lower entropy near ## the image border. ## ## @seealso{entropy, paddarray, stdfilt} ## @end deftypefn function retval = entropyfilt (I, domain = true (9), padding = "symmetric", varargin) ## Check input if (nargin == 0) error ("entropyfilt: not enough input arguments"); endif if (!ismatrix (I)) error ("entropyfilt: first input must be a matrix"); endif if (!ismatrix (domain)) error ("entropyfilt: second input argument must be a logical matrix"); endif domain = (domain > 0); ## Get number of histogram bins if (islogical (I)) nbins = 2; else nbins = 256; endif ## Convert to 8 or 16 bit integers if needed switch (class (I)) case {"double", "single", "int16", "int32", "int64", "uint16", "uint32", "uint64"} min_val = double (min (I (:))); max_val = double (max (I (:))); if (min_val == max_val) retval = zeros (size (I)); return; endif I = (double (I) - min_val)./(max_val - min_val); I = uint8 (255 * I); case {"logical", "int8", "uint8"} ## Do nothing otherwise error ("entropyfilt: cannot handle images of class '%s'", class (I)); endswitch size (I) ## Pad image pad = floor (size (domain)/2); I = padarray (I, pad, padding, varargin {:}); even = (round (size (domain)/2) == size (domain)/2); idx = cell (1, ndims (I)); for k = 1:ndims (I) idx {k} = (even (k)+1):size (I, k); endfor I = I (idx {:}); size (I) ## Perform filtering retval = __spatial_filtering__ (I, domain, "entropy", I, nbins); endfunction