I am a newbie to imaging processing and I found some difficulties in implementing image smoothing.
Basically, I have an image A and I would like to replace everything pixel by its local average. So I define masks M1 = ones(10) and use
newImage = conv2(A, M1,'same')
It works fine. But in image A, there are meaningless pixels fully due to noise and I don't want to include them in the averaging. How do I do that, say the meaningful pixels are defined via another mask M2?
I made a simple loop over the image. It works but is way slower than the conv2().
for i = 1:self.row for j = 1:self.col if self.M2(i,j) % only treat meaningful pixels A(i,j) = self.createAvgPhasor(i,j); end end end function [s_avg]=createAvgPhasor(self,m,n) % bound box along x if m > self.rB xl = m - self.rB; else xl = 1; end if m < self.row_rB xu = m + self.rB; else xu = self.row; end % bound box along y if n > self.rB yl = n - self.rB; else yl = 1; end if n < self.col_rB yu = n + self.rB; else yu = self.col; end M1 = false(self.row,self.col); M1(xl:xu,yl:yu) = true; msk = M1 & self.M2; s_avg = mean(self.Phi(msk)); end
Thanks very much for your help.