Title :
Complexity-adaptive universal signal estimation for compressed sensing
Author :
Junan Zhu ; Baron, Dror ; Duarte, Marco F.
Author_Institution :
ECE Dept., North Carolina State Univ., Raleigh, NC, USA
fDate :
June 29 2014-July 2 2014
Abstract :
We study the compressed sensing (CS) signal estimation problem where a signal is measured via a linear matrix multiplication under additive noise. While this setup usually assumes sparsity or compressibility in the signal during estimation, additional signal structure that can be leveraged is often not known a priori. For signals with independent and identically distributed (i.i.d.) entries, existing CS algorithms achieve optimal or near optimal estimation error without knowing the statistics of the signal. This paper addresses estimating stationary ergodic non-i.i.d. signals with unknown statistics. We have previously proposed a universal CS approach to simultaneously estimate the statistics of a stationary ergodic signal as well as the signal itself. This paper significantly improves on our previous work, especially for continuous-valued signals, by offering a four-stage algorithm called Complexity-Adaptive Universal Signal Estimation (CAUSE), where the alphabet size of the estimate adaptively matches the coding complexity of the signal. Numerical results show that the new approach offers comparable and in some cases, especially for non-i.i.d. signals, lower mean square error than the prior art, despite not knowing the signal statistics.
Keywords :
compressed sensing; mean square error methods; statistical analysis; CAUSE; CS algorithm; CS signal estimation problem; additive noise; alphabet size; complexity-adaptive universal signal estimation; compressed sensing signal estimation problem; continuous-valued signals; four-stage algorithm; iid entries; independent identically-distributed entries; linear matrix multiplication; mean square error; near-optimal estimation error; signal coding complexity; signal compressibility; signal sparsity; signal statistics; signal structure; stationary ergodic non-iid signal estimation; stationary ergodic signal statistic estimation; universal CS approach; Complexity theory; Compressed sensing; Estimation; Markov processes; Signal processing algorithms; Signal to noise ratio; MAP estimation; Markov chain Monte Carlo; non-i.i.d. signals; signal estimation; universal algorithms;
Conference_Titel :
Statistical Signal Processing (SSP), 2014 IEEE Workshop on
Conference_Location :
Gold Coast, VIC
DOI :
10.1109/SSP.2014.6884657