SpaRCS: Recovering Low-Rank and Sparse Matrices from Compressive Measurements

Abstract

We consider the problem of recovering a matrix $\mathbf{M}$ that is the sum of a low-rank matrix $\mathbf{L}$ and a sparse matrix $\mathbf{S}$ from a small set of linear measurements of the form $\mathbf{y} = \mathcal{A}(\mathbf{M}) = \mathcal{A}({\bf L}+{\bf S})$. This model subsumes three important classes of signal recovery problems: compressive sensing, affine rank minimization, and robust principal component analysis. We propose a natural optimization problem for signal recovery under this model and develop a new greedy algorithm called SpaRCS to solve it. SpaRCS inherits a number of desirable properties from the state-of-the-art CoSaMP and ADMiRA algorithms, including exponential convergence and efficient implementation. Simulation results with video compressive sensing, hyperspectral imaging, and robust matrix completion data sets demonstrate both the accuracy and efficacy of the algorithm.

Cite

Text

Waters et al. "SpaRCS: Recovering Low-Rank and Sparse Matrices from Compressive Measurements." Neural Information Processing Systems, 2011.

Markdown

[Waters et al. "SpaRCS: Recovering Low-Rank and Sparse Matrices from Compressive Measurements." Neural Information Processing Systems, 2011.](https://mlanthology.org/neurips/2011/waters2011neurips-sparcs/)

BibTeX

@inproceedings{waters2011neurips-sparcs,
  title     = {{SpaRCS: Recovering Low-Rank and Sparse Matrices from Compressive Measurements}},
  author    = {Waters, Andrew E. and Sankaranarayanan, Aswin C. and Baraniuk, Richard},
  booktitle = {Neural Information Processing Systems},
  year      = {2011},
  pages     = {1089-1097},
  url       = {https://mlanthology.org/neurips/2011/waters2011neurips-sparcs/}
}