I'm trying to fit a 2D Gaussian to an image. Noise is very low, so my attempt was to rotate the image such that the two principal axes do not co-vary, figure out the maximum and just compute the ...
I came across this equation in an image processing paper for removing shadows. In log space, p is orthogonal to U=1/√3 〖(1,1,1)〗^T, that is p lives on a plane orthogonal to U. Can anybody help me ...
I've been using Wikipedia and random Google searches to find information on eigenvectors, principal component analysis etc. and their application to image processing such as text-detection, eigenfaces ...
I have this matrix A, representing similarities of pixel intensities of an image. For example: Consider a 10 x 10 image. Matrix A in this case would be of dimension 100 x 100, and element A(i,j) would ...