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Code Listing by Edward Wiggin

Code 1-8 of 8   






SIFT is derived from a downloaded binary code 'siftDemoV4.rar'.



Generate Gaussian or Laplacian pyramids, or reconstruct an image from a pyramid. Contains a demo script doing image blending using pyramids. The function is more convenient to use than the Matlab function impyramid.



[G GWINLEN] = genGaborKernelF( MU,NU,sigma,scaleXY,imgSz )
GIMG = GABORCONV(IMG,G,GWINLEN)
Extract the texture feature using Gabor filter/wavelet. You should first generate cell array G, which is a set of kernels in freq domain, then...



The file contains Lucas-Kanade Tracker with pyramid and iteration to improve performance. There is a wrapper for image sequences, and a corner detection function using Shi-Tomasi method.



SUSAN algorithm is modified to detect corners and exclude edges.The file contains a function, a test script and a test image



There are 2 implementations of RANdom SAmple Consensus algorithm in the file, one for 2D line fitting only, the other for general purposes(fitting dataA with data B). Example (Finding a homography between 2 images) is provided and the comments are...



To get the best performance, you may have to adjust the parameters in the algorithm.



It can be seen as a introduction to Bayesian classification, or Matlab plotting.
function ret = drawBayesGauss2D(mu,c,prProb,ax)
% Draw Bayes classification results for 2D Gaussian distributions.
% mu: 2-by-N, mean vector for N...