A Fast Algorithm for Low Rank + Sparse column-wise Compressive Sensing (2311.03824v1)
Abstract: This paper focuses studies the following low rank + sparse (LR+S) column-wise compressive sensing problem. We aim to recover an $n \times q$ matrix, $\X* =[ \x_1*, \x_2*, \cdots , \x_q*]$ from $m$ independent linear projections of each of its $q$ columns, given by $\y_k :=\A_k\x_k*$, $k \in [q]$. Here, $\y_k$ is an $m$-length vector with $m < n$. We assume that the matrix $\X*$ can be decomposed as $\X=\L^+\S*$, where $\L*$ is a low rank matrix of rank $r << \min(n,q)$ and $\S*$ is a sparse matrix. Each column of $\S$ contains $\rho$ non-zero entries. The matrices $\A_k$ are known and mutually independent for different $k$. To address this recovery problem, we propose a novel fast GD-based solution called AltGDmin-LR+S, which is memory and communication efficient. We numerically evaluate its performance by conducting a detailed simulation-based study.