Robust Compressed Sensing and Sparse Coding with the Difference Map
Computer Vision and Pattern Recognition
2013-11-25 v2 Data Analysis, Statistics and Probability
Machine Learning
Abstract
In compressed sensing, we wish to reconstruct a sparse signal from observed data . In sparse coding, on the other hand, we wish to find a representation of an observed signal as a sparse linear combination, with coefficients , of elements from an overcomplete dictionary. While many algorithms are competitive at both problems when is very sparse, it can be challenging to recover when it is less sparse. We present the Difference Map, which excels at sparse recovery when sparseness is lower and noise is higher. The Difference Map out-performs the state of the art with reconstruction from random measurements and natural image reconstruction via sparse coding.
Cite
@article{arxiv.1311.0053,
title = {Robust Compressed Sensing and Sparse Coding with the Difference Map},
author = {Will Landecker and Rick Chartrand and Simon DeDeo},
journal= {arXiv preprint arXiv:1311.0053},
year = {2013}
}
Comments
8 pages; Revised comparison to DM-ECME algorithm in Section 2.1