Title :
Denoising via MCMC-Based Lossy Compression
Author :
Jalali, Shirin ; Weissman, Tsachy
Author_Institution :
Center for Math. of Inf., California Inst. of Technol., Pasadena, CA, USA
fDate :
6/1/2012 12:00:00 AM
Abstract :
It has been established in the literature, in various theoretical and asymptotic senses, that universal lossy compression followed by some simple postprocessing results in universal denoising, for the setting of a stationary ergodic source corrupted by additive white noise. However, this interesting theoretical result has not yet been tested in practice in denoising simulated or real data. In this paper, we employ a recently developed MCMC-based universal lossy compressor to build a universal compression-based denoising algorithm. We show that applying this iterative lossy compression algorithm with appropriately chosen distortion measure and distortion level, followed by a simple derandomization operation, results in a family of denoisers that compares favorably (both theoretically and in practice) with other MCMC-based schemes, and with the discrete universal denoiser DUDE.
Keywords :
Markov processes; Monte Carlo methods; signal denoising; MCMC-based universal lossy compressor; Markov chain Monte Carlo; additive white noise; discrete universal denoiser DUDE; iterative lossy compression algorithm; stationary ergodic source; universal compression-based denoising algorithm; universal lossy compression; Distortion measurement; Loss measurement; Markov processes; Noise; Noise reduction; Simulated annealing; Vectors; Compression-based denoising; Markov chain Monte Carlo; denoising; simulated annealing; universal lossy compression;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2012.2190597