Mercurial > hg > smallbox
view util/Rice Wavelet Toolbox/denoise.m @ 115:921f9931c84f sup_158_IMG_Processing_toolbox_
IMP toolbox dependency removed from SMALL_ImgDeNoiseResult
author | Ivan Damnjanovic lnx <ivan.damnjanovic@eecs.qmul.ac.uk> |
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date | Tue, 24 May 2011 16:13:04 +0100 |
parents | f69ae88b8be5 |
children |
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function [xd,xn,option] = denoise(x,h,type,option) % [xd,xn,option] = denoise(x,h,type,option); % % DENOISE is a generic program for wavelet based denoising. % The program will denoise the signal x using the 2-band wavelet % system described by the filter h using either the traditional % discrete wavelet transform (DWT) or the linear shift invariant % discrete wavelet transform (also known as the undecimated DWT % (UDWT)). % % Input: % x : 1D or 2D signal to be denoised % h : Scaling filter to be applied % type : Type of transform (Default: type = 0) % 0 --> Discrete wavelet transform (DWT) % 1 --> Undecimated DWT (UDWT) % option : Default settings is marked with '*': % *type = 0 --> option = [0 3.0 0 0 0 0] % type = 1 --> option = [0 3.6 0 1 0 0] % option(1) : Whether to threshold low-pass part % 0 --> Don't threshold low pass component % 1 --> Threshold low pass component % option(2) : Threshold multiplier, c. The threshold is % computed as: % thld = c*MAD(noise_estimate)). % The default values are: % c = 3.0 for the DWT based denoising % c = 3.6 for the UDWT based denoising % option(3) : Type of variance estimator % 0 --> MAD (mean absolute deviation) % 1 --> STD (classical numerical std estimate) % option(4) : Type of thresholding % 0 --> Soft thresholding % 1 --> Hard thresholding % option(5) : Number of levels, L, in wavelet decomposition. By % setting this to the default value '0' a maximal % decomposition is used. % option(6) : Actual threshold to use (setting this to % anything but 0 will mean that option(3) % is ignored) % % Output: % xd : Estimate of noise free signal % xn : The estimated noise signal (x-xd) % option : A vector of actual parameters used by the % program. The vector is configured the same way as % the input option vector with one added element % option(7) = type. % % HERE'S AN EASY WAY TO RUN THE EXAMPLES: % Cut-and-paste the example you want to run to a new file % called ex.m, for example. Delete out the % at the beginning % of each line in ex.m (Can use search-and-replace in your editor % to replace it with a space). Type 'ex' in matlab and hit return. % % Example 1: % h = daubcqf(6); [s,N] = makesig('Doppler'); n = randn(1,N); % x = s + n/10; % (approximately 10dB SNR) % figure;plot(x);hold on;plot(s,'r'); % % %Denoise x with the default method based on the DWT % [xd,xn,opt1] = denoise(x,h); % figure;plot(xd);hold on;plot(s,'r'); % % %Denoise x using the undecimated (LSI) wavelet transform % [yd,yn,opt2] = denoise(x,h,1); % figure;plot(yd);hold on;plot(s,'r'); % % Example 2: (on an image) % h = daubcqf(6); load lena; % noisyLena = lena + 25 * randn(size(lena)); % figure; colormap(gray); imagesc(lena); title('Original Image'); % figure; colormap(gray); imagesc(noisyLena); title('Noisy Image'); % Denoise lena with the default method based on the DWT % [denoisedLena,xn,opt1] = denoise(noisyLena,h); % figure; colormap(gray); imagesc(denoisedLena); title('denoised Image'); % % % See also: mdwt, midwt, mrdwt, mirdwt, SoftTh, HardTh, setopt % %File Name: denoise.m %Last Modification Date: 04/15/97 10:44:28 %Current Version: denoise.m 2.4 %File Creation Date: Mon Feb 20 08:33:15 1995 %Author: Jan Erik Odegard <odegard@ece.rice.edu> % %Copyright (c) 2000 RICE UNIVERSITY. All rights reserved. %Created by Jan Erik Odegard, Department of ECE, Rice University. % %This software is distributed and licensed to you on a non-exclusive %basis, free-of-charge. Redistribution and use in source and binary forms, %with or without modification, are permitted provided that the following %conditions are met: % %1. Redistribution of source code must retain the above copyright notice, % this list of conditions and the following disclaimer. %2. Redistribution in binary form must reproduce the above copyright notice, % this list of conditions and the following disclaimer in the % documentation and/or other materials provided with the distribution. %3. All advertising materials mentioning features or use of this software % must display the following acknowledgment: This product includes % software developed by Rice University, Houston, Texas and its contributors. %4. Neither the name of the University nor the names of its contributors % may be used to endorse or promote products derived from this software % without specific prior written permission. % %THIS SOFTWARE IS PROVIDED BY WILLIAM MARSH RICE UNIVERSITY, HOUSTON, TEXAS, %AND CONTRIBUTORS AS IS AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, %BUT NOT LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS %FOR A PARTICULAR PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL RICE UNIVERSITY %OR CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL, %EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT LIMITED TO, %PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, DATA, OR PROFITS; %OR BUSINESS INTERRUPTIONS) HOWEVER CAUSED AND ON ANY THEORY OF LIABILITY, %WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR %OTHERWISE), PRODUCT LIABILITY, OR OTHERWISE ARISING IN ANY WAY OUT OF THE %USE OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE. % %For information on commercial licenses, contact Rice University's Office of %Technology Transfer at techtran@rice.edu or (713) 348-6173 % %Change History: Fixed output of function and an error in the computation % of the threshold for redundant denoising. % <Jan Erik Odegard> <Mon Jul 31, 1995> % % This code is composed of several of our old codes for % wavelet based denoising. In an effort to make the mess % more manageable we decided to create on code that would % handle all the various wavelet based denoising methods. % However, only time will show (as we discover new and % improved forms of denoising) if we can succeed in our goals. % <Jan Erik Odegard> <Thu May 11, 1995> % if(nargin < 2) error('You need to provide at least 2 inputs: x and h'); end; if(nargin < 3), type = 0; option = []; elseif(nargin < 4) option = []; end; if(isempty(type)), type = 0; end; if(type == 0), default_opt = [0 3.0 0 0 0 0]; elseif(type == 1), default_opt = [0 3.6 0 1 0 0]; else, error(['Unknown denoising method',10,... 'If it is any good we need to have a serious talk :-)']); end; option = setopt(option,default_opt); [mx,nx] = size(x); dim = min(mx,nx); if(dim == 1), n = max(mx,nx); else, n = dim; end; if(option(5) == 0), L = floor(log2(n)); else L = option(5); end; if(type == 0), % Denoising by DWT xd = mdwt(x,h,L); if (option(6) == 0), tmp = xd(floor(mx/2)+1:mx,floor(nx/2)+1:nx); if(option(3) == 0), thld = option(2)*median(abs(tmp(:)))/.67; elseif(option(3) == 1), thld = option(2)*std(tmp(:)); else error('Unknown threshold estimator, Use either MAD or STD'); end; else, thld = option(6); end; if(dim == 1) ix = 1:n/(2^L); ykeep = xd(ix); else ix = 1:mx/(2^L); jx = 1:nx/(2^L); ykeep = xd(ix,jx); end; if(option(4) == 0), xd = SoftTh(xd,thld); elseif(option(4) == 1), xd = HardTh(xd,thld); else, error('Unknown threshold rule. Use either Soft (0) or Hard (1)'); end; if (option(1) == 0), if(dim == 1), xd(ix) = ykeep; else, xd(ix,jx) = ykeep; end; end; xd = midwt(xd,h,L); elseif(type == 1), % Denoising by UDWT [xl,xh] = mrdwt(x,h,L); if(dim == 1), c_offset = 1; else, c_offset = 2*nx + 1; end; if (option(6) == 0), tmp = xh(:,c_offset:c_offset+nx-1); if(option(3) == 0), thld = option(2)*median(abs(tmp(:)))/.67; elseif(option(3) == 1), thld = option(2)*std(tmp(:)); else error('Unknown threshold estimator, Use either MAD or STD'); end; else, thld = option(6); end; if(option(4) == 0), xh = SoftTh(xh,thld); if(option(1) == 1), xl = SoftTh(xl,thld); end; elseif(option(4) == 1), xh = HardTh(xh,thld); if(option(1) == 1), xl = HardTh(xl,thld); end; else, error('Unknown threshold rule. Use either Soft (0) or Hard (1)'); end; xd = mirdwt(xl,xh,h,L); else, % Denoising by unknown method error(['Unknown denoising method',10,... 'If it is any good we need to have a serious talk :-)']); end; option(6) = thld; option(7) = type; xn = x - xd;