Sparse Signal Recovery Using Markov Random Fields
Cevher, Volkan, Duarte, Marco F., Hegde, Chinmay, Baraniuk, Richard
–Neural Information Processing Systems
Compressive Sensing (CS) combines sampling and compression into a single sub-Nyquist linear measurement process for sparse and compressible signals. In this paper, we extend the theory of CS to include signals that are concisely represented in terms of a graphical model. In particular, we use Markov Random Fields (MRFs) to represent sparse signals whose nonzero coefficients are clustered. Our new model-based reconstruction algorithm, dubbed Lattice Matching Pursuit (LaMP), stably recovers MRF-modeled signals using many fewer measurements and computations than the current state-of-the-art algorithms.
Neural Information Processing Systems
Dec-31-2009