Oblique Pursuits for Compressed Sensing
Kiryung Lee, Yoram Bresler, and Marius Junge

TL;DR
This paper introduces oblique pursuits, a new approach in compressed sensing that relaxes ideal assumptions for signal recovery guarantees, making practical applications more reliable and effective.
Contribution
It proposes the restricted biorthogonality property (RBOP) and modified greedy algorithms called oblique pursuits, extending theoretical guarantees to real-world compressed sensing scenarios.
Findings
Oblique pursuits perform competitively with traditional algorithms.
RBOP provides guarantees without ideal assumptions.
Numerical results validate the effectiveness of oblique pursuits.
Abstract
Compressed sensing is a new data acquisition paradigm enabling universal, simple, and reduced-cost acquisition, by exploiting a sparse signal model. Most notably, recovery of the signal by computationally efficient algorithms is guaranteed for certain randomized acquisition systems. However, there is a discrepancy between the theoretical guarantees and practical applications. In applications, including Fourier imaging in various modalities, the measurements are acquired by inner products with vectors selected randomly (sampled) from a frame. Currently available guarantees are derived using a so-called restricted isometry property (RIP), which has only been shown to hold under ideal assumptions. For example, the sampling from the frame needs to be independent and identically distributed with the uniform distribution, and the frame must be tight. In practice though, one or more of the…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Image and Signal Denoising Methods · Microwave Imaging and Scattering Analysis
