Fitting Gaussian keeping max amplitude same
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Hi
I want to fit multi peak data keeping the maximum amplidute same. I tried smoothening and peak fitting but unable to achinve good results. Data looks like the blue line and i want to fit somthing similar to black line. Kindly advise.
Regards
Abhi
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Jeff Miller
2021-6-3
One option is to fit a smoothed curve and then multiply the (smoothed, predicted) height by whatever constant is needed to make the smooth curve larger than the jagged data one at all points.
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Mathieu NOE
2021-6-3
hello
robust smoothing can help you
see code below
clc
clearvars
%--- Example #1: smooth a curve / narrow peaks removal ---
x = linspace(0,100,256);
y = cos(x/10)+(x/50).^2 + randn(size(x))/10;
y([70 75 80]) = [5.5 5 6];
N = 100;
z = smoothn(y,N); % Regular smoothing
zr = smoothn(y,N,'robust'); % Robust smoothing
subplot(121), plot(x,y,'r',x,z,'k','LineWidth',2)
axis square, title('Regular smoothing')
subplot(122), plot(x,y,'r',x,zr,'k','LineWidth',2)
axis square, title('Robust smoothing')
function [z,s,exitflag] = smoothn(varargin)
%SMOOTHN Robust spline smoothing for 1-D to N-D data.
% SMOOTHN provides a fast, automatized and robust discretized spline
% smoothing for data of arbitrary dimension.
%
% Z = SMOOTHN(Y) automatically smoothes the uniformly-sampled array Y. Y
% can be any N-D noisy array (time series, images, 3D data,...). Non
% finite data (NaN or Inf) are treated as missing values.
%
% Z = SMOOTHN(Y,S) smoothes the array Y using the smoothing parameter S.
% S must be a real positive scalar. The larger S is, the smoother the
% output will be. If the smoothing parameter S is omitted (see previous
% option) or empty (i.e. S = []), it is automatically determined by
% minimizing the generalized cross-validation (GCV) score.
%
% Z = SMOOTHN(Y,W) or Z = SMOOTHN(Y,W,S) smoothes Y using a weighting
% array W of positive values, that must have the same size as Y. Note
% that a nil weight corresponds to a missing value.
%
% If you want to smooth a vector field or multicomponent data, Y must be
% a cell array. For example, if you need to smooth a 3-D vectorial flow
% (Vx,Vy,Vz), use Y = {Vx,Vy,Vz}. The output Z is also a cell array which
% contains the smoothed components. See examples 5 to 8 below.
%
% Robust smoothing
% ----------------
% Z = SMOOTHN(...,'robust') carries out a robust smoothing that minimizes
% the influence of outlying data.
%
% [Z,S] = SMOOTHN(...) also returns the calculated value for the
% smoothness parameter S so that you can fine-tune the smoothing
% subsequently if needed.
%
% An iteration process is used in the presence of weighted and/or missing
% values. Z = SMOOTHN(...,OPTION_NAME,OPTION_VALUE) smoothes with the
% termination parameters specified by OPTION_NAME and OPTION_VALUE. They
% can contain the following criteria:
% -----------------
% TolZ: Termination tolerance on Z (default = 1e-3)
% TolZ must be in ]0,1[
% MaxIter: Maximum number of iterations allowed (default = 100)
% Initial: Initial value for the iterative process (default =
% original data)
% Weights: Weighting function for robust smoothing:
% 'bisquare' (default), 'talworth' or 'cauchy'
% -----------------
% Syntax: [Z,...] = SMOOTHN(...,'MaxIter',500,'TolZ',1e-4,'Initial',Z0);
%
% [Z,S,EXITFLAG] = SMOOTHN(...) returns a boolean value EXITFLAG that
% describes the exit condition of SMOOTHN:
% 1 SMOOTHN converged.
% 0 Maximum number of iterations was reached.
%
% Reference
% ---------
% Garcia D, Robust smoothing of gridded data in one and higher dimensions
% with missing values. Computational Statistics & Data Analysis, 2010.
% <a
% href="matlab:web('http://www.biomecardio.com/pageshtm/publi/csda10.pdf')">PDF download</a>
%
% For velocity vector fields, also refer to:
%
% Garcia D, A fast all-in-one method for automated post-processing of PIV
% data. Exp Fluids, 2011.
% <a
% href="matlab:web('http://www.biomecardio.com/pageshtm/publi/expfluids1010.pdf')">PDF download</a>
%
% Examples:
% --------
% %--- Example #1: smooth a curve ---
% x = linspace(0,100,2^8);
% y = cos(x/10)+(x/50).^2 + randn(size(x))/10;
% y([70 75 80]) = [5.5 5 6];
% z = smoothn(y); % Regular smoothing
% zr = smoothn(y,'robust'); % Robust smoothing
% subplot(121), plot(x,y,'r.',x,z,'k','LineWidth',2)
% axis square, title('Regular smoothing')
% subplot(122), plot(x,y,'r.',x,zr,'k','LineWidth',2)
% axis square, title('Robust smoothing')
%
% %--- Example #2: smooth a surface ---
% xp = 0:.02:1;
% [x,y] = meshgrid(xp);
% f = exp(x+y) + sin((x-2*y)*3);
% fn = f + randn(size(f))*0.5;
% fs = smoothn(fn);
% subplot(121), surf(xp,xp,fn), zlim([0 8]), axis square
% subplot(122), surf(xp,xp,fs), zlim([0 8]), axis square
%
% %--- Example #3: smooth an image with missing data ---
% n = 256;
% y0 = peaks(n);
% y = y0 + randn(size(y0))*2;
% I = randperm(n^2);
% y(I(1:n^2*0.5)) = NaN; % lose 1/2 of data
% y(40:90,140:190) = NaN; % create a hole
% z = smoothn(y); % smooth data
% subplot(2,2,1:2), imagesc(y), axis equal off
% title('Noisy corrupt data')
% subplot(223), imagesc(z), axis equal off
% title('Recovered data ...')
% subplot(224), imagesc(y0), axis equal off
% title('... compared with the actual data')
%
% %--- Example #4: smooth volumetric data ---
% [x,y,z] = meshgrid(-2:.2:2);
% xslice = [-0.8,1]; yslice = 2; zslice = [-2,0];
% vn = x.*exp(-x.^2-y.^2-z.^2) + randn(size(x))*0.06;
% subplot(121), slice(x,y,z,vn,xslice,yslice,zslice,'cubic')
% title('Noisy data')
% v = smoothn(vn);
% subplot(122), slice(x,y,z,v,xslice,yslice,zslice,'cubic')
% title('Smoothed data')
%
% %--- Example #5: smooth a cardioid ---
% t = linspace(0,2*pi,1000);
% x = 2*cos(t).*(1-cos(t)) + randn(size(t))*0.1;
% y = 2*sin(t).*(1-cos(t)) + randn(size(t))*0.1;
% z = smoothn({x,y});
% plot(x,y,'r.',z{1},z{2},'k','linewidth',2)
% axis equal tight
%
% %--- Example #6: smooth a 3-D parametric curve ---
% t = linspace(0,6*pi,1000);
% x = sin(t) + 0.1*randn(size(t));
% y = cos(t) + 0.1*randn(size(t));
% z = t + 0.1*randn(size(t));
% u = smoothn({x,y,z});
% plot3(x,y,z,'r.',u{1},u{2},u{3},'k','linewidth',2)
% axis tight square
%
% %--- Example #7: smooth a 2-D vector field ---
% [x,y] = meshgrid(linspace(0,1,24));
% Vx = cos(2*pi*x+pi/2).*cos(2*pi*y);
% Vy = sin(2*pi*x+pi/2).*sin(2*pi*y);
% Vx = Vx + sqrt(0.05)*randn(24,24); % adding Gaussian noise
% Vy = Vy + sqrt(0.05)*randn(24,24); % adding Gaussian noise
% I = randperm(numel(Vx));
% Vx(I(1:30)) = (rand(30,1)-0.5)*5; % adding outliers
% Vy(I(1:30)) = (rand(30,1)-0.5)*5; % adding outliers
% Vx(I(31:60)) = NaN; % missing values
% Vy(I(31:60)) = NaN; % missing values
% Vs = smoothn({Vx,Vy},'robust'); % automatic smoothing
% subplot(121), quiver(x,y,Vx,Vy,2.5), axis square
% title('Noisy velocity field')
% subplot(122), quiver(x,y,Vs{1},Vs{2}), axis square
% title('Smoothed velocity field')
%
% %--- Example #8: smooth a 3-D vector field ---
% load wind % original 3-D flow
% % -- Create noisy data
% % Gaussian noise
% un = u + randn(size(u))*8;
% vn = v + randn(size(v))*8;
% wn = w + randn(size(w))*8;
% % Add some outliers
% I = randperm(numel(u)) < numel(u)*0.025;
% un(I) = (rand(1,nnz(I))-0.5)*200;
% vn(I) = (rand(1,nnz(I))-0.5)*200;
% wn(I) = (rand(1,nnz(I))-0.5)*200;
% % -- Visualize the noisy flow (see CONEPLOT documentation)
% figure, title('Noisy 3-D vectorial flow')
% xmin = min(x(:)); xmax = max(x(:));
% ymin = min(y(:)); ymax = max(y(:));
% zmin = min(z(:));
% daspect([2,2,1])
% xrange = linspace(xmin,xmax,8);
% yrange = linspace(ymin,ymax,8);
% zrange = 3:4:15;
% [cx cy cz] = meshgrid(xrange,yrange,zrange);
% k = 0.1;
% hcones = coneplot(x,y,z,un*k,vn*k,wn*k,cx,cy,cz,0);
% set(hcones,'FaceColor','red','EdgeColor','none')
% hold on
% wind_speed = sqrt(un.^2 + vn.^2 + wn.^2);
% hsurfaces = slice(x,y,z,wind_speed,[xmin,xmax],ymax,zmin);
% set(hsurfaces,'FaceColor','interp','EdgeColor','none')
% hold off
% axis tight; view(30,40); axis off
% camproj perspective; camzoom(1.5)
% camlight right; lighting phong
% set(hsurfaces,'AmbientStrength',.6)
% set(hcones,'DiffuseStrength',.8)
% % -- Smooth the noisy flow
% Vs = smoothn({un,vn,wn},'robust');
% % -- Display the result
% figure, title('3-D flow smoothed by SMOOTHN')
% daspect([2,2,1])
% hcones = coneplot(x,y,z,Vs{1}*k,Vs{2}*k,Vs{3}*k,cx,cy,cz,0);
% set(hcones,'FaceColor','red','EdgeColor','none')
% hold on
% wind_speed = sqrt(Vs{1}.^2 + Vs{2}.^2 + Vs{3}.^2);
% hsurfaces = slice(x,y,z,wind_speed,[xmin,xmax],ymax,zmin);
% set(hsurfaces,'FaceColor','interp','EdgeColor','none')
% hold off
% axis tight; view(30,40); axis off
% camproj perspective; camzoom(1.5)
% camlight right; lighting phong
% set(hsurfaces,'AmbientStrength',.6)
% set(hcones,'DiffuseStrength',.8)
%
% See also DCTSMOOTH, SMOOTH1Q, DCTN, IDCTN.
%
% -- Damien Garcia -- 2009/03, revised 2013/06
% website: <a
% href="matlab:web('http://www.biomecardio.com')">www.BiomeCardio.com</a>
% Check input arguments
error(nargchk(1,12,nargin));
%% Test & prepare the variables
%---
k = 0;
while k<nargin && ~ischar(varargin{k+1}), k = k+1; end
%---
% y = array to be smoothed
y = varargin{1};
if ~iscell(y), y = {y}; end
sizy = size(y{1});
ny = numel(y); % number of y components
for i = 1:ny
if ~isequal(sizy,size(y{i}))
error('Matlab:smoothn:SizeMismatch',...
'Data arrays must have the same size.')
end
y{i} = double(y{i});
end
noe = prod(sizy); % number of elements
if noe<2, z = y; s = []; exitflag = true; return, end
%---
% Smoothness parameter and weights
W = ones(sizy);
s = [];
if k==2
if isempty(varargin{2}) || isscalar(varargin{2}) % smoothn(y,s)
s = varargin{2}; % smoothness parameter
else % smoothn(y,W)
W = varargin{2}; % weight array
end
elseif k==3 % smoothn(y,W,s)
W = varargin{2}; % weight array
s = varargin{3}; % smoothness parameter
end
if ~isequal(size(W),sizy)
error('MATLAB:smoothn:SizeMismatch',...
'Arrays for data and weights (Y and W) must have same size.')
elseif ~isempty(s) && (~isscalar(s) || s<0)
error('MATLAB:smoothn:IncorrectSmoothingParameter',...
'The smoothing parameter S must be a scalar >=0')
end
%---
% "Maximal number of iterations" criterion
I = find(strcmpi(varargin,'MaxIter'),1);
if isempty(I)
MaxIter = 100; % default value for MaxIter
else
try
MaxIter = varargin{I+1};
catch %#ok
error('MATLAB:smoothn:IncorrectMaxIter',...
'MaxIter must be an integer >=1')
end
if ~isnumeric(MaxIter) || ~isscalar(MaxIter) ||...
MaxIter<1 || MaxIter~=round(MaxIter)
error('MATLAB:smoothn:IncorrectMaxIter',...
'MaxIter must be an integer >=1')
end
end
%---
% "Tolerance on smoothed output" criterion
I = find(strcmpi(varargin,'TolZ'),1);
if isempty(I)
TolZ = 1e-3; % default value for TolZ
else
try
TolZ = varargin{I+1};
catch %#ok
error('MATLAB:smoothn:IncorrectTolZ',...
'TolZ must be in ]0,1[')
end
if ~isnumeric(TolZ) || ~isscalar(TolZ) || TolZ<=0 || TolZ>=1
error('MATLAB:smoothn:IncorrectTolZ',...
'TolZ must be in ]0,1[')
end
end
%---
% "Initial Guess" criterion
I = find(strcmpi(varargin,'Initial'),1);
if isempty(I)
isinitial = false; % default value for TolZ
else
isinitial = true;
try
z0 = varargin{I+1};
catch %#ok
error('MATLAB:smoothn:IncorrectInitialGuess',...
'Z0 must be a valid initial guess for Z')
end
if ~isnumeric(z0) || ~isequal(size(z0),sizy)
error('MATLAB:smoothn:IncorrectTolZ',...
'Z0 must be a valid initial guess for Z')
end
end
%---
% "Weighting function" criterion (for robust smoothing)
I = find(strcmpi(varargin,'Weights'),1);
if isempty(I)
weightstr = 'bisquare'; % default weighting function
else
try
weightstr = lower(varargin{I+1});
catch ME
error('MATLAB:smoothn:IncorrectWeights',...
'A valid weighting function must be chosen')
end
if ~ischar(weightstr)
error('MATLAB:smoothn:IncorrectWeights',...
'A valid weighting function must be chosen')
end
end
%---
% "Order" criterion (by default m = 2)
% Note: m = 0 is of course not recommended!
I = find(strcmpi(varargin,'Order'),1);
if isempty(I)
m = 2; % order
else
try
m = varargin{I+1};
catch %#ok
error('MATLAB:smoothn:IncorrectOrder',...
'A valid order must be chosen')
end
if ~ismember(m,0:2);
error('MATLAB:smoothn:IncorrectOrder',...
'The order must be 0, 1 or 2.')
end
end
%---
% Weights. Zero weights are assigned to not finite values (Inf or NaN),
% (Inf/NaN values = missing data).
IsFinite = isfinite(y{1});
for i = 2:ny, IsFinite = IsFinite & isfinite(y{i}); end
nof = nnz(IsFinite); % number of finite elements
W = W.*IsFinite;
if any(W<0)
error('MATLAB:smoothn:NegativeWeights',...
'Weights must all be >=0')
else
W = W/max(W(:));
end
%---
% Weighted or missing data?
isweighted = any(W(:)<1);
%---
% Robust smoothing?
isrobust = any(strcmpi(varargin,'robust'));
%---
% Automatic smoothing?
isauto = isempty(s);
%% Create the Lambda tensor
%---
% Lambda contains the eingenvalues of the difference matrix used in this
% penalized least squares process (see CSDA paper for details)
d = ndims(y);
Lambda = zeros(sizy);
for i = 1:d
siz0 = ones(1,d);
siz0(i) = sizy(i);
Lambda = bsxfun(@plus,Lambda,...
cos(pi*(reshape(1:sizy(i),siz0)-1)/sizy(i)));
end
Lambda = 2*(d-Lambda);
if ~isauto, Gamma = 1./(1+s*Lambda.^m); end
%% Upper and lower bound for the smoothness parameter
% The average leverage (h) is by definition in [0 1]. Weak smoothing occurs
% if h is close to 1, while over-smoothing appears when h is near 0. Upper
% and lower bounds for h are given to avoid under- or over-smoothing. See
% equation relating h to the smoothness parameter for m = 2 (Equation #12
% in the referenced CSDA paper).
N = sum(sizy~=1); % tensor rank of the y-array
hMin = 1e-6; hMax = 0.99;
if m==0 % Not recommended. For mathematical purpose only.
sMinBnd = 1/hMax^(1/N)-1;
sMaxBnd = 1/hMin^(1/N)-1;
elseif m==1
sMinBnd = (1/hMax^(2/N)-1)/4;
sMaxBnd = (1/hMin^(2/N)-1)/4;
elseif m==2
sMinBnd = (((1+sqrt(1+8*hMax^(2/N)))/4/hMax^(2/N))^2-1)/16;
sMaxBnd = (((1+sqrt(1+8*hMin^(2/N)))/4/hMin^(2/N))^2-1)/16;
end
%% Initialize before iterating
%---
Wtot = W;
%--- Initial conditions for z
if isweighted
%--- With weighted/missing data
% An initial guess is provided to ensure faster convergence. For that
% purpose, a nearest neighbor interpolation followed by a coarse
% smoothing are performed.
%---
if isinitial % an initial guess (z0) has been already given
z = z0;
else
z = InitialGuess(y,IsFinite);
end
else
z = cell(size(y));
for i = 1:ny, z{i} = zeros(sizy); end
end
%---
z0 = z;
for i = 1:ny
y{i}(~IsFinite) = 0; % arbitrary values for missing y-data
end
%---
tol = 1;
RobustIterativeProcess = true;
RobustStep = 1;
nit = 0;
DCTy = cell(1,ny);
vec = @(x) x(:);
%--- Error on p. Smoothness parameter s = 10^p
errp = 0.1;
opt = optimset('TolX',errp);
%--- Relaxation factor RF: to speedup convergence
RF = 1 + 0.75*isweighted;
%% Main iterative process
%---
while RobustIterativeProcess
%--- "amount" of weights (see the function GCVscore)
aow = sum(Wtot(:))/noe; % 0 < aow <= 1
%---
while tol>TolZ && nit<MaxIter
nit = nit+1;
for i = 1:ny
DCTy{i} = dctn(Wtot.*(y{i}-z{i})+z{i});
end
if isauto && ~rem(log2(nit),1)
%---
% The generalized cross-validation (GCV) method is used.
% We seek the smoothing parameter S that minimizes the GCV
% score i.e. S = Argmin(GCVscore).
% Because this process is time-consuming, it is performed from
% time to time (when the step number - nit - is a power of 2)
%---
fminbnd(@gcv,log10(sMinBnd),log10(sMaxBnd),opt);
end
for i = 1:ny
z{i} = RF*idctn(Gamma.*DCTy{i}) + (1-RF)*z{i};
end
% if no weighted/missing data => tol=0 (no iteration)
tol = isweighted*norm(vec([z0{:}]-[z{:}]))/norm(vec([z{:}]));
z0 = z; % re-initialization
end
exitflag = nit<MaxIter;
if isrobust %-- Robust Smoothing: iteratively re-weighted process
%--- average leverage
if m==0 % not recommended
h = 1/(1+s);
elseif m==1
h = 1/sqrt(1+4*s);
elseif m==2
h = sqrt(1+16*s);
h = sqrt(1+h)/sqrt(2)/h;
else
error('m must be 0, 1 or 2.')
end
h = h^N;
%--- take robust weights into account
Wtot = W.*RobustWeights(y,z,IsFinite,h,weightstr);
%--- re-initialize for another iterative weighted process
isweighted = true; tol = 1; nit = 0;
%---
RobustStep = RobustStep+1;
RobustIterativeProcess = RobustStep<4; % 3 robust steps are enough.
else
RobustIterativeProcess = false; % stop the whole process
end
end
%% Warning messages
%---
if isauto
if abs(log10(s)-log10(sMinBnd))<errp
warning('MATLAB:smoothn:SLowerBound',...
['S = ' num2str(s,'%.3e') ': the lower bound for S ',...
'has been reached. Put S as an input variable if required.'])
elseif abs(log10(s)-log10(sMaxBnd))<errp
warning('MATLAB:smoothn:SUpperBound',...
['S = ' num2str(s,'%.3e') ': the upper bound for S ',...
'has been reached. Put S as an input variable if required.'])
end
end
if nargout<3 && ~exitflag
warning('MATLAB:smoothn:MaxIter',...
['Maximum number of iterations (' int2str(MaxIter) ') has ',...
'been exceeded. Increase MaxIter option or decrease TolZ value.'])
end
if numel(z)==1, z = z{:}; end
%% GCV score
%---
function GCVscore = gcv(p)
% Search the smoothing parameter s that minimizes the GCV score
%---
s = 10^p;
Gamma = 1./(1+s*Lambda.^m);
%--- RSS = Residual sum-of-squares
RSS = 0;
if aow>0.9 % aow = 1 means that all of the data are equally weighted
% very much faster: does not require any inverse DCT
for kk = 1:ny
RSS = RSS + norm(DCTy{kk}(:).*(Gamma(:)-1))^2;
end
else
% take account of the weights to calculate RSS:
for kk = 1:ny
yhat = idctn(Gamma.*DCTy{kk});
RSS = RSS + norm(sqrt(Wtot(IsFinite)).*...
(y{kk}(IsFinite)-yhat(IsFinite)))^2;
end
end
%---
TrH = sum(Gamma(:));
GCVscore = RSS/nof/(1-TrH/noe)^2;
end
end
function W = RobustWeights(y,z,I,h,wstr)
% One seeks the weights for robust smoothing...
ABS = @(x) sqrt(sum(abs(x).^2,2)); % "abs" in case of complex numbers
r = cellfun(@minus,y,z,'UniformOutput',0); % residuals
r = cellfun(@(x) x(:),r,'UniformOutput',0);
rI = cell2mat(cellfun(@(x) x(I),r,'UniformOutput',0));
MMED = median(rI); % marginal median
AD = ABS(bsxfun(@minus,rI,MMED)); % absolute deviation
MAD = median(AD); % median absolute deviation
%-- Studentized residuals
u = ABS(cell2mat(r))/(1.4826*MAD)/sqrt(1-h);
u = reshape(u,size(I));
if strcmp(wstr,'cauchy')
c = 2.385; W = 1./(1+(u/c).^2); % Cauchy weights
elseif strcmp(wstr,'talworth')
c = 2.795; W = u<c; % Talworth weights
elseif strcmp(wstr,'bisquare')
c = 4.685; W = (1-(u/c).^2).^2.*((u/c)<1); % bisquare weights
else
error('MATLAB:smoothn:IncorrectWeights',...
'A valid weighting function must be chosen')
end
W(isnan(W)) = 0;
% NOTE:
% ----
% The RobustWeights subfunction looks complicated since we work with cell
% arrays. For better clarity, here is how it would look like without the
% use of cells. Much more readable, isn't it?
%
% function W = RobustWeights(y,z,I,h)
% % weights for robust smoothing.
% r = y-z; % residuals
% MAD = median(abs(r(I)-median(r(I)))); % median absolute deviation
% u = abs(r/(1.4826*MAD)/sqrt(1-h)); % studentized residuals
% c = 4.685; W = (1-(u/c).^2).^2.*((u/c)<1); % bisquare weights
% W(isnan(W)) = 0;
% end
end
%% Initial Guess with weighted/missing data
function z = InitialGuess(y,I)
ny = numel(y);
%-- nearest neighbor interpolation (in case of missing values)
if any(~I(:))
z = cell(size(y));
if license('test','image_toolbox')
for i = 1:ny
[z{i},L] = bwdist(I);
z{i} = y{i};
z{i}(~I) = y{i}(L(~I));
end
else
% If BWDIST does not exist, NaN values are all replaced with the
% same scalar. The initial guess is not optimal and a warning
% message thus appears.
z = y;
for i = 1:ny
z{i}(~I) = mean(y{i}(I));
end
warning('MATLAB:smoothn:InitialGuess',...
['BWDIST (Image Processing Toolbox) does not exist. ',...
'The initial guess may not be optimal; additional',...
' iterations can thus be required to ensure complete',...
' convergence. Increase ''MaxIter'' criterion if necessary.'])
end
else
z = y;
end
%-- coarse fast smoothing using one-tenth of the DCT coefficients
siz = size(z{1});
z = cellfun(@(x) dctn(x),z,'UniformOutput',0);
for k = 1:ndims(z{1})
for i = 1:ny
z{i}(ceil(siz(k)/10)+1:end,:) = 0;
z{i} = reshape(z{i},circshift(siz,[0 1-k]));
z{i} = shiftdim(z{i},1);
end
end
z = cellfun(@(x) idctn(x),z,'UniformOutput',0);
end
%% DCTN
function y = dctn(y)
%DCTN N-D discrete cosine transform.
% Y = DCTN(X) returns the discrete cosine transform of X. The array Y is
% the same size as X and contains the discrete cosine transform
% coefficients. This transform can be inverted using IDCTN.
%
% Reference
% ---------
% Narasimha M. et al, On the computation of the discrete cosine
% transform, IEEE Trans Comm, 26, 6, 1978, pp 934-936.
%
% Example
% -------
% RGB = imread('autumn.tif');
% I = rgb2gray(RGB);
% J = dctn(I);
% imshow(log(abs(J)),[]), colormap(jet), colorbar
%
% The commands below set values less than magnitude 10 in the DCT matrix
% to zero, then reconstruct the image using the inverse DCT.
%
% J(abs(J)<10) = 0;
% K = idctn(J);
% figure, imshow(I)
% figure, imshow(K,[0 255])
%
% -- Damien Garcia -- 2008/06, revised 2011/11
% -- www.BiomeCardio.com --
y = double(y);
sizy = size(y);
y = squeeze(y);
dimy = ndims(y);
% Some modifications are required if Y is a vector
if isvector(y)
dimy = 1;
if size(y,1)==1, y = y.'; end
end
% Weighting vectors
w = cell(1,dimy);
for dim = 1:dimy
n = (dimy==1)*numel(y) + (dimy>1)*sizy(dim);
w{dim} = exp(1i*(0:n-1)'*pi/2/n);
end
% --- DCT algorithm ---
if ~isreal(y)
y = complex(dctn(real(y)),dctn(imag(y)));
else
for dim = 1:dimy
siz = size(y);
n = siz(1);
y = y([1:2:n 2*floor(n/2):-2:2],:);
y = reshape(y,n,[]);
y = y*sqrt(2*n);
y = ifft(y,[],1);
y = bsxfun(@times,y,w{dim});
y = real(y);
y(1,:) = y(1,:)/sqrt(2);
y = reshape(y,siz);
y = shiftdim(y,1);
end
end
y = reshape(y,sizy);
end
%% IDCTN
function y = idctn(y)
%IDCTN N-D inverse discrete cosine transform.
% X = IDCTN(Y) inverts the N-D DCT transform, returning the original
% array if Y was obtained using Y = DCTN(X).
%
% Reference
% ---------
% Narasimha M. et al, On the computation of the discrete cosine
% transform, IEEE Trans Comm, 26, 6, 1978, pp 934-936.
%
% Example
% -------
% RGB = imread('autumn.tif');
% I = rgb2gray(RGB);
% J = dctn(I);
% imshow(log(abs(J)),[]), colormap(jet), colorbar
%
% The commands below set values less than magnitude 10 in the DCT matrix
% to zero, then reconstruct the image using the inverse DCT.
%
% J(abs(J)<10) = 0;
% K = idctn(J);
% figure, imshow(I)
% figure, imshow(K,[0 255])
%
% See also DCTN, IDSTN, IDCT, IDCT2, IDCT3.
%
% -- Damien Garcia -- 2009/04, revised 2011/11
% -- www.BiomeCardio.com --
y = double(y);
sizy = size(y);
y = squeeze(y);
dimy = ndims(y);
% Some modifications are required if Y is a vector
if isvector(y)
dimy = 1;
if size(y,1)==1
y = y.';
end
end
% Weighing vectors
w = cell(1,dimy);
for dim = 1:dimy
n = (dimy==1)*numel(y) + (dimy>1)*sizy(dim);
w{dim} = exp(1i*(0:n-1)'*pi/2/n);
end
% --- IDCT algorithm ---
if ~isreal(y)
y = complex(idctn(real(y)),idctn(imag(y)));
else
for dim = 1:dimy
siz = size(y);
n = siz(1);
y = reshape(y,n,[]);
y = bsxfun(@times,y,w{dim});
y(1,:) = y(1,:)/sqrt(2);
y = ifft(y,[],1);
y = real(y*sqrt(2*n));
I = (1:n)*0.5+0.5;
I(2:2:end) = n-I(1:2:end-1)+1;
y = y(I,:);
y = reshape(y,siz);
y = shiftdim(y,1);
end
end
y = reshape(y,sizy);
end
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