I need to perform some elementary histogram matching on 2 sets of 3D data. This is part of a larger algorithm.
My goal is to perform this by minimising the following cost function:
|| cumpdf(f(A)) - cumpdf(B) || .^2
cumpdf is the cumulative histogram
f() is linear transformation a*A + b where a/b are affine coefficients to be
A is the image to be transformed and B is the image to be matched
I am using lsqcurvefit however I have run into some trouble and therefore really need some help.
A(maskA==0)=0; B(maskB==0)=0; [na,~] = hist(A(maskA~=0),500); na = na ./ numel(A(maskA~=0)); x_data = cumsum(na); [nb,~] = hist(B(maskB~=0),500); nb = nb ./ numel(B(maskB~=0)); y_data = cumsum(nb); xo = [1.5 -200]; [coeff,~] = lsqcurvefit(@cost,xo,x_data,y_data); function F = cost(x,xc) F = x(1).*A + x(2); [nc,~] = hist(C(maskA~=0),500); nc = nc / numel(C(maskA~=0)); xc = cumsum(nc);
Amask and Bmask just represent some indexing I need to do.
My question is: I know that the above is wrong. However, I think it represents best what I want to do, regarding the cost function and the goal. Some help would me much appreciated!