ITOCMLMay 11, 2013

Corrupted Sensing: Novel Guarantees for Separating Structured Signals

arXiv:1305.2524v2118 citations
Originality Incremental advance
AI Analysis

This work addresses the corrupted sensing problem for signal processing applications, offering incremental improvements with new interpretable bounds for structured signals.

The paper tackles the problem of recovering structured signals from corrupted measurements by analyzing convex programming approaches, providing conditions for exact and stable recovery, and demonstrating close agreement between theoretical bounds and empirical phase transitions.

We study the problem of corrupted sensing, a generalization of compressed sensing in which one aims to recover a signal from a collection of corrupted or unreliable measurements. While an arbitrary signal cannot be recovered in the face of arbitrary corruption, tractable recovery is possible when both signal and corruption are suitably structured. We quantify the relationship between signal recovery and two geometric measures of structure, the Gaussian complexity of a tangent cone and the Gaussian distance to a subdifferential. We take a convex programming approach to disentangling signal and corruption, analyzing both penalized programs that trade off between signal and corruption complexity, and constrained programs that bound the complexity of signal or corruption when prior information is available. In each case, we provide conditions for exact signal recovery from structured corruption and stable signal recovery from structured corruption with added unstructured noise. Our simulations demonstrate close agreement between our theoretical recovery bounds and the sharp phase transitions observed in practice. In addition, we provide new interpretable bounds for the Gaussian complexity of sparse vectors, block-sparse vectors, and low-rank matrices, which lead to sharper guarantees of recovery when combined with our results and those in the literature.

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