Title :
Information-Theoretically Optimal Compressed Sensing via Spatial Coupling and Approximate Message Passing
Author :
Donoho, David L. ; Javanmard, Adel ; Montanari, Alessandro
Author_Institution :
Dept. of Stat., Stanford Univ., Stanford, CA, USA
Abstract :
We study the compressed sensing reconstruction problem for a broad class of random, band-diagonal sensing matrices. This construction is inspired by the idea of spatial coupling in coding theory. As demonstrated heuristically and numerically by Krzakala [30], message passing algorithms can effectively solve the reconstruction problem for spatially coupled measurements with undersampling rates close to the fraction of nonzero coordinates. We use an approximate message passing (AMP) algorithm and analyze it through the state evolution method. We give a rigorous proof that this approach is successful as soon as the undersampling rate δ exceeds the (upper) Rényi information dimension of the signal, d̅(pX). More precisely, for a sequence of signals of diverging dimension n whose empirical distribution converges to pX, reconstruction is with high probability successful from d̅(pX) n+o(n) measurements taken according to a band diagonal matrix. For sparse signals, i.e., sequences of dimension n and k(n) nonzero entries, this implies reconstruction from k(n)+o(n) measurements. For “discrete” signals, i.e., signals whose coordinates take a fixed finite set of values, this implies reconstruction from o(n) measurements. The result is robust with respect to noise, does not apply uniquely to random signals, but requires the knowledge of the empirical distribution of the signal pX.
Keywords :
approximation theory; compressed sensing; encoding; message passing; signal reconstruction; statistical distributions; AMP algorithm; Renyi information dimension; approximate message passing algorithm; band diagonal matrix; band-diagonal sensing matrices; coding theory; dimension sequences; discrete signals; information-theoretically optimal compressed sensing reconstruction problem; nonzero coordinates; signal sequence; sparse signals; spatially coupled measurements; state evolution method; undersampling rates; Compressed sensing; Couplings; Message passing; Noise; Robustness; Sensors; Vectors; Approximate message passing; compressed sensing; information dimension; spatial coupling; state evolution;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2013.2274513