Robust principal component analysis?

Author:

Candès Emmanuel J.1,Li Xiaodong1,Ma Yi2,Wright John3

Affiliation:

1. Stanford University, Stanford, CA

2. University of Illinois at Urbana-Champaign, Urbana, IL, Microsoft Research Asia, Beijing, China

3. Microsoft Research Asia, Beijing, China

Abstract

This article is about a curious phenomenon. Suppose we have a data matrix, which is the superposition of a low-rank component and a sparse component. Can we recover each component individually? We prove that under some suitable assumptions, it is possible to recover both the low-rank and the sparse components exactly by solving a very convenient convex program called Principal Component Pursuit ; among all feasible decompositions, simply minimize a weighted combination of the nuclear norm and of the ℓ 1 norm. This suggests the possibility of a principled approach to robust principal component analysis since our methodology and results assert that one can recover the principal components of a data matrix even though a positive fraction of its entries are arbitrarily corrupted. This extends to the situation where a fraction of the entries are missing as well. We discuss an algorithm for solving this optimization problem, and present applications in the area of video surveillance, where our methodology allows for the detection of objects in a cluttered background, and in the area of face recognition, where it offers a principled way of removing shadows and specularities in images of faces.

Funder

Office of Naval Research

Division of Electrical, Communications and Cyber Systems

Division of Information and Intelligent Systems

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Hardware and Architecture,Information Systems,Control and Systems Engineering,Software

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