Optimizing Matrices For Compressed Sensing Using Existing Goodness Measures: Negative Results, And An Alternative
Alankar Kotwal, Ajit Rajwade

TL;DR
This paper critically examines the limitations of using mutual coherence and related bounds for optimizing sensing matrices in compressed sensing, revealing their looseness and proposing an alternative average case error approach that improves practical performance.
Contribution
It demonstrates the unreliability of coherence-based optimization bounds and introduces a new paradigm based on average case error for better sensing matrix design.
Findings
Mutual coherence minimization often underperforms compared to random codes.
Looseness of coherence and RIC bounds affects matrix optimization reliability.
The proposed average case error approach outperforms coherence-based methods in experiments.
Abstract
The bound that arises out of sparse recovery analysis in compressed sensing involves input signal sparsity and some property of the sensing matrix. An effort has therefore been made in the literature to optimize sensing matrices for optimal recovery using this property. We discover, in the specific case of optimizing codes for the CACTI camera, that the popular method of mutual coherence minimization does not produce optimal results: codes designed to optimize effective dictionary coherence often perform worse than random codes in terms of mean squared reconstruction error. This surprising phenomenon leads us to investigate the reliability of the coherence bound for matrix optimization, in terms of its looseness. We examine, on simulated data, the looseness of the bound as it propagates across various steps of the inequalities in a derivation leading to the final bound. We then…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Blind Source Separation Techniques · Distributed Sensor Networks and Detection Algorithms
