Title :
Sample Distortion for Compressed Imaging
Author :
Chunli Guo ; Davies, Mike E.
Author_Institution :
Inst. for Digital Commun., Edinburgh Univ., Edinburgh, UK
Abstract :
We propose the notion of a sample distortion (SD) function for independent and identically distributed (i.i.d) compressive distributions to fundamentally quantify the achievable reconstruction performance of compressed sensing for certain encoder-decoder pairs at a given sampling ratio. Two lower bounds on the achievable performance and the intrinsic convexity property is derived. A zeroing procedure is then introduced to improve non convex SD functions. The SD framework is then applied to analyse compressed imaging with a multi-resolution statistical image model using both the generalized Gaussian distribution and the two-state Gaussian mixture distribution. We subsequently focus on the Gaussian encoder-Bayesian optimal approximate message passing (AMP) decoder pair, whose theoretical SD function is provided by the rigorous analysis of the AMP algorithm. Given the image statistics, analytic bandwise sample allocation for bandwise independent model is derived as a reverse water-filling scheme. Som and Schniter´s turbo message passing approach is further deployed to integrate the bandwise sampling with the exploitation of the hidden Markov tree structure of wavelet coefficients. Natural image simulations confirm that with oracle image statistics, the SD function associated with the optimized sample allocation can accurately predict the possible compressed sensing gains. Finally, a general sample allocation profile based on average image statistics not only illustrates preferable performance but also makes the scheme practical.
Keywords :
Bayes methods; Gaussian distribution; approximation theory; compressed sensing; concave programming; data compression; distortion; hidden Markov models; image coding; image reconstruction; image sampling; message passing; trees (mathematics); turbo codes; wavelet transforms; AMP algorithm; Gaussian encoder-Bayesian optimal approximate message passing decoder pair; analytic bandwise sample allocation; bandwise independent model; bandwise sampling integration; compressed imaging analysis; compressed sensing reconstruction performance; encoder-decoder pairs; general sample allocation profile; generalized Gaussian distribution; hidden Markov tree structure; independent-and-identically distributed compressive distributions; intrinsic convexity property; multiresolution statistical image model; natural image simulations; nonconvex SD function improvement; oracle image statistics; reverse water-filling scheme; sample distortion function; sampling ratio; turbo message passing approach; two-state Gaussian mixture distribution; wavelet coefficients; zeroing procedure; Compressed sensing; Decoding; Gaussian distribution; Hidden Markov models; Image reconstruction; Resource management; Sensors; Bandwise sampling; sample allocation; sample distortion function; turbo decoding;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2013.2286775