I have tried to make a Gaussian filter in Matlab without using imfilter()
and fspecial()
.
I have tried this but result is not like the one I have with imfilter and fspecial.
Here is my codes.
function Gaussian_filtered = Gauss(image_x, sigma)
% for single axis
% http://en.wikipedia.org/wiki/Gaussian_filter
Gaussian_filtered = exp(-image_x^2/(2*sigma^2)) / (sigma*sqrt(2*pi));
end
for 2D Gaussian,
function h = Gaussian2D(hsize, sigma)
n1 = hsize;
n2 = hsize;
for i = 1 : n2
for j = 1 : n1
% size is 10;
% -5<center<5 area is covered.
c = [j-(n1+1)/2 i-(n2+1)/2]';
% A product of both axes is 2D Gaussian filtering
h(i,j) = Gauss(c(1), sigma)*Gauss(c(2), sigma);
end
end
end
and the final one is
function Filtered = GaussianFilter(ImageData, hsize, sigma)
%Get the result of Gaussian
filter_ = Gaussian2D(hsize, sigma);
%check image
[r, c] = size(ImageData);
Filtered = zeros(r, c);
for i=1:r
for j=1:c
for k=1:hsize
for m=1:hsize
Filtered = Filtered + ImageData(i,j).*filter_(k,m);
end
end
end
end
end
But the processed image is almost same as the input image. I wonder the last function GaussianFiltered()
is problematic...
Thanks.
here's an alternative:
Create the 2D-Gaussian:
function f=gaussian2d(N,sigma)
% N is grid size, sigma speaks for itself
[x y]=meshgrid(round(-N/2):round(N/2), round(-N/2):round(N/2));
f=exp(-x.^2/(2*sigma^2)-y.^2/(2*sigma^2));
f=f./sum(f(:));
Filtered image, given your image is called Im
:
filtered_signal=conv2(Im,gaussian2d(N,sig),'same');
Here's some plots:
imagesc(gaussian2d(7,2.5))
Im=rand(100);subplot(1,2,1);imagesc(Im)
subplot(1,2,2);imagesc(conv2(Im,gaussian2d(7,2.5),'same'));