Abstract:
Multi-hypothesis motion compensated filter (MHMCF) utilizes a number of hypotheses (temporal predictions) to estimate the current pixel which is corrupted with noise. Whi...Show MoreMetadata
Abstract:
Multi-hypothesis motion compensated filter (MHMCF) utilizes a number of hypotheses (temporal predictions) to estimate the current pixel which is corrupted with noise. While showing remarkable denoising results, MHMCF is computationally intensive as full search is employed in the expectation of finding good temporal predictions in the presence of noise. In the frame of MHMCF, a fast denoising algorithm FMHMCF is proposed in this paper. With edge preserved low pass prefiltering and noise-robust fast multihypothesis search, FMHMCF could find reliable hypotheses while checking very few search locations, so that the denoising process can be dramatically accelerated. Experimental results show that FM-HMCF can be 10 to 15 times faster than MHMCF, while achieving the same or even better denoising performance.
Published in: 2007 IEEE Workshop on Signal Processing Systems
Date of Conference: 17-19 October 2007
Date Added to IEEE Xplore: 21 November 2007
ISBN Information: