Mercurial > hg > smallbox
diff util/ksvd utils/reggrid.m @ 70:c3eca463202d
(none)
author | idamnjanovic |
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date | Wed, 16 Mar 2011 14:16:57 +0000 |
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--- /dev/null Thu Jan 01 00:00:00 1970 +0000 +++ b/util/ksvd utils/reggrid.m Wed Mar 16 14:16:57 2011 +0000 @@ -0,0 +1,136 @@ +function [varargout] = reggrid(sz,num,mode) +%REGGRID Regular sampling grid. +% [I1,I2,...,Ip] = REGGRID([N1 N2 ... Np], NUM) returns the indices +% of a regular uniform sampling grid over a p-dimensional matrix with +% dimensions N1xN2x...xNp. NUM is the minimal number of required samples, +% and it is ensured that the actual number of samples, given by +% length(I1)xlength(I2)x...xlength(Ip), is at least as large as NUM. +% +% [I1,I2,...,Ip] = REGGRID([N1 N2 ... Np], NUM,'MODE') specifies the +% method for distributing the samples along each dimension. Valid modes +% include 'eqdist' (the default mode) and 'eqnum'. 'eqdist' indicates an +% equal distance between the samples in each dimension, while 'eqnum' +% indicates an equal number of samples in each dimension. +% +% Notes about MODE: +% +% 1. The 'eqnum' mode will generally fail when the p-th root of NUM +% (i.e. NUM^(1/p)) is larger than min([N1 N2 ... Np]). Thus 'eqdist' is +% the more useful choice for sampling an arbitrary number of samples +% from the matrix (up to the total number of matrix entries). +% +% 2. In both modes, the equality (of the distance between samples, or +% the number of samples in each dimension) is only approximate. This is +% because REGGRID attempts to maintain the appropriate equality while at +% the same time find a sampling pattern where the total number of +% samples is as close as possible to NUM. In general, the larger {Ni} +% and NUM are, the tighter the equality. +% +% Example: Sample a set of blocks uniformly from a 2D image. +% +% n = 512; blocknum = 20000; blocksize = [8 8]; +% im = rand(n,n); +% [i1,i2] = reggrid(size(im)-blocksize+1, blocknum); +% blocks = sampgrid(im, blocksize, i1, i2); +% +% See also SAMPGRID. + +% Ron Rubinstein +% Computer Science Department +% Technion, Haifa 32000 Israel +% ronrubin@cs +% +% November 2007 + +dim = length(sz); + +if (nargin<3) + mode = 'eqdist'; +end + +if (any(sz<1)) + error(['Invalid matrix size : [' num2str(sz) ']']); +end + +if (num > prod(sz)) + warning(['Invalid number of samples, returning maximum number of samples.']); +elseif (num <= 0) + if (num < 0) + warning('Invalid number of samples, assuming 0 samples.'); + end + for i = 1:length(sz) + varargout{i} = []; + end + return; +end + + +if (strcmp(mode,'eqdist')) + + % approximate distance between samples: total volume divided by number of + % samples gives the average volume per sample. then, taking the p-th root + % gives the average distance between samples + d = (prod(sz)/num)^(1/dim); + + % compute the initial guess for number of samples in each dimension. + % then, while total number of samples is too large, decrese the number of + % samples by one in the dimension where the samples are the most crowded. + % finally, do the opposite process until just passing num, so the final + % number of samples is the closest to num from above. + + n = min(max(round(sz/d),1),sz); % set n so that it saturates at 1 and sz + + active_dims = find(n>1); % dimensions where the sample num can be reduced + while(prod(n)>num && ~isempty(active_dims)) + [y,id] = min((sz(active_dims)-1)./n(active_dims)); + n(active_dims(id)) = n(active_dims(id))-1; + if (n(active_dims(id)) < 2) + active_dims = find(n>1); + end + end + + active_dims = find(n<sz); % dimensions where the sample num can be increased + while(prod(n)<num && ~isempty(active_dims)) + [y,id] = max((sz(active_dims)-1)./n(active_dims)); + n(active_dims(id)) = n(active_dims(id))+1; + if (n(active_dims(id)) >= sz(active_dims(id))) + active_dims = find(n<sz); + end + end + + for i = 1:dim + varargout{i} = round((1:n(i))/n(i)*sz(i)); + varargout{i} = varargout{i} - floor((varargout{i}(1)-1)/2); + end + +elseif (strcmp(mode,'eqnum')) + + % same idea as above + n = min(max( ones(size(sz)) * round(num^(1/dim)) ,1),sz); + + active_dims = find(n>1); + while(prod(n)>num && ~isempty(active_dims)) + [y,id] = min((sz(active_dims)-1)./n(active_dims)); + n(active_dims(id)) = n(active_dims(id))-1; + if (n(active_dims(id)) < 2) + active_dims = find(n>1); + end + end + + active_dims = find(n<sz); + while(prod(n)<num && ~isempty(active_dims)) + [y,id] = max((sz(active_dims)-1)./n(active_dims)); + n(active_dims(id)) = n(active_dims(id))+1; + if (n(active_dims(id)) >= sz(active_dims(id))) + active_dims = find(n<sz); + end + end + + for i = 1:dim + varargout{i} = round((1:n(i))/n(i)*sz(i)); + varargout{i} = varargout{i} - floor((varargout{i}(1)-1)/2); + end +else + error('Invalid sampling mode'); +end +