Md. Mahedi Hasan, September 2012--April 2014, "Adaptive
Edge-guided Block-matching and 3D filtering (BM3D) Image
Denoising Algorithm", Computer Science Department, Faculty of
Science, University of Western Ontario, Canada
M.Sc. Thesis Abstract
Image denoising is a well studied field, yet reducing noise
from images is still a valid challenge. Recently proposed
Block-matching and 3D filtering (BM3D) is the current
state of the art algorithm for denoising images corrupted by
Additive White Gaussian noise (AWGN). Though BM3D
outperforms all existing methods for AWGN denoising, still
its performance decreases as the noise level increases in
images, since it is harder to find proper match for reference
blocks in the presence of highly corrupted pixel values. It
also blurs sharp edges and textures. To overcome these
problems we proposed an edge guided BM3D with selective pixel
restoration. For higher noise levels it is possible to detect
noisy pixels form its neighborhoods gray level statistics. We
exploited this property to reduce noise as much as possible by
applying a pre-filter. We also introduced an edge guided
pixel restoration process in the hard-thresholding step of
BM3D to restore the sharpness of edges and textures.
Experimental results confirm that our proposed method is
competitive and shows better results than BM3D in most of
the considered subjective and objective quality measurements,
particularly in preserving edges, textures and image contrast.