Deep Unrolling for Nonconvex Robust Principal Component Analysis

07/12/2023
by   Elizabeth Z. C. Tan, et al.
0

We design algorithms for Robust Principal Component Analysis (RPCA) which consists in decomposing a matrix into the sum of a low rank matrix and a sparse matrix. We propose a deep unrolled algorithm based on an accelerated alternating projection algorithm which aims to solve RPCA in its nonconvex form. The proposed procedure combines benefits of deep neural networks and the interpretability of the original algorithm and it automatically learns hyperparameters. We demonstrate the unrolled algorithm's effectiveness on synthetic datasets and also on a face modeling problem, where it leads to both better numerical and visual performances.

READ FULL TEXT
research
05/21/2018

A Nonconvex Projection Method for Robust PCA

Robust principal component analysis (RPCA) is a well-studied problem wit...
research
02/28/2018

Exactly Robust Kernel Principal Component Analysis

We propose a novel method called robust kernel principal component analy...
research
12/20/2013

The Sparse Principal Component of a Constant-rank Matrix

The computation of the sparse principal component of a matrix is equival...
research
07/17/2021

Robust Principal Component Analysis of Vortex-induced Vibrations using Particle Image Velocimetry Measurements

Experimental techniques to measure fluid flow fields often contain measu...
research
08/14/2022

Virgo: Scalable Unsupervised Classification of Cosmological Shock Waves

Cosmological shock waves are essential to understanding the formation of...
research
06/17/2022

Riemannian CUR Decompositions for Robust Principal Component Analysis

Robust Principal Component Analysis (PCA) has received massive attention...
research
05/25/2019

Best Pair Formulation & Accelerated Scheme for Non-convex Principal Component Pursuit

The best pair problem aims to find a pair of points that minimize the di...

Please sign up or login with your details

Forgot password? Click here to reset