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Compressed Sensing with Sparse Binary Matrices: Instance Optimal Error Guarantees in Near-Optimal Time (1302.5936v1)

Published 24 Feb 2013 in cs.IT, math.IT, and math.NA

Abstract: A compressed sensing method consists of a rectangular measurement matrix, $M \in \mathbbm{R}{m \times N}$ with $m \ll N$, together with an associated recovery algorithm, $\mathcal{A}: \mathbbm{R}m \rightarrow \mathbbm{R}N$. Compressed sensing methods aim to construct a high quality approximation to any given input vector ${\bf x} \in \mathbbm{R}N$ using only $M {\bf x} \in \mathbbm{R}m$ as input. In particular, we focus herein on instance optimal nonlinear approximation error bounds for $M$ and $\mathcal{A}$ of the form $ | {\bf x} - \mathcal{A} (M {\bf x}) |_p \leq | {\bf x} - {\bf x}{\rm opt}_k |_p + C k{1/p - 1/q} | {\bf x} - {\bf x}{\rm opt}_k |_q$ for ${\bf x} \in \mathbbm{R}N$, where ${\bf x}{\rm opt}_k$ is the best possible $k$-term approximation to ${\bf x}$. In this paper we develop a compressed sensing method whose associated recovery algorithm, $\mathcal{A}$, runs in $O((k \log k) \log N)$-time, matching a lower bound up to a $O(\log k)$ factor. This runtime is obtained by using a new class of sparse binary compressed sensing matrices of near optimal size in combination with sublinear-time recovery techniques motivated by sketching algorithms for high-volume data streams. The new class of matrices is constructed by randomly subsampling rows from well-chosen incoherent matrix constructions which already have a sub-linear number of rows. As a consequence, fewer random bits than previously required are needed in order to select the rows utilized by the fast reconstruction algorithms considered herein.

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