Noise Folding in Compressed Sensing
Information Theory
2015-10-28 v1 math.IT
Statistics Theory
Statistics Theory
Abstract
The literature on compressed sensing has focused almost entirely on settings where the signal is noiseless and the measurements are contaminated by noise. In practice, however, the signal itself is often subject to random noise prior to measurement. We briefly study this setting and show that, for the vast majority of measurement schemes employed in compressed sensing, the two models are equivalent with the important difference that the signal-to-noise ratio is divided by a factor proportional to p/n, where p is the dimension of the signal and n is the number of observations. Since p/n is often large, this leads to noise folding which can have a severe impact on the SNR.
Keywords
Cite
@article{arxiv.1104.3833,
title = {Noise Folding in Compressed Sensing},
author = {Ery Arias-Castro and Yonina C. Eldar},
journal= {arXiv preprint arXiv:1104.3833},
year = {2015}
}