SHO-FA: Robust compressive sensing with order-optimal complexity, measurements, and bits
Mayank Bakshi, Sidharth Jaggi, Sheng Cai, Minghua Chen

TL;DR
SHO-FA is a robust, efficient compressive sensing algorithm that reconstructs sparse signals using minimal measurements, linear complexity, and is resilient to noise, with order-optimal performance guarantees.
Contribution
This paper introduces SHO-FA, a novel compressive sensing algorithm that achieves order-optimal measurement complexity, robustness to noise, and fast decoding, improving upon prior methods.
Findings
Requires only O(k) measurements for reconstruction
Decoding complexity is O(k) arithmetic operations
Robust to noise and approximate sparsity
Abstract
Suppose x is any exactly k-sparse vector in R^n. We present a class of sparse matrices A, and a corresponding algorithm that we call SHO-FA (for Short and Fast) that, with high probability over A, can reconstruct x from Ax. The SHO-FA algorithm is related to the Invertible Bloom Lookup Tables recently introduced by Goodrich et al., with two important distinctions - SHO-FA relies on linear measurements, and is robust to noise. The SHO-FA algorithm is the first to simultaneously have the following properties: (a) it requires only O(k) measurements, (b) the bit-precision of each measurement and each arithmetic operation is O (log(n) + P) (here 2^{-P} is the desired relative error in the reconstruction of x), (c) the decoding complexity is O(k) arithmetic operations and encoding complexity is O(n) arithmetic operations, and (d) if the reconstruction goal is simply to recover a single…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Microwave Imaging and Scattering Analysis · Distributed Sensor Networks and Detection Algorithms
