Sparse Representation of a Polytope and Recovery of Sparse Signals and Low-Rank Matrices

Loading...
Thumbnail Image

Related Collections

Degree type

Discipline

Subject

compressed sensing
matrix algebra
minimisation
signal representation
affine rank minimization
compressed sensing
constrained l1 minimization
constrained nuclear norm minimization
k-sparse signal recovery
low-rank matrix recovery
sharp restricted isometry conditions
sparse polytope representation
sparse vectors
minimization methods
noise
noise measurement
sparse matrices
vectors
affine rank minimization
constrained nuclear norm minimization
low-rank matrix recovery
restricted isometry
sparse signal recovery
Computer Sciences
Statistics and Probability

Funder

Grant number

License

Copyright date

Distributor

Related resources

Contributor

Abstract

This paper considers compressed sensing and affine rank minimization in both noiseless and noisy cases and establishes sharp restricted isometry conditions for sparse signal and low-rank matrixrecovery. The analysis relies on a key technical tool, which represents points in a polytope by convex combinations of sparse vectors. The technique is elementary while yielding sharp results. It is shown that for any given constant t ≥ 4/3, in compressed sensing, δtkA <; √((t-1)/t) guarantees the exactrecovery of all k sparse signals in the noiseless case through the constrained l1 minimization, and similarly, in affine rank minimization, δtrM <; √((t-1)/t) ensures the exact reconstruction of all matriceswith rank at most r in the noiseless case via the constrained nuclear norm minimization. In addition, for any ε > 0, δtkA <; √(t-1/t) + ε is not sufficient to guarantee the exact recovery of all k-sparse signals for large k. Similar results also hold for matrix recovery. In addition, the conditions δtkA <; √((t-)1/t) and δtrM<; √((t-1)/t) are also shown to be sufficient, respectively, for stable recovery of approximately sparsesignals and low-rank matrices in the noisy case.

Advisor

Date Range for Data Collection (Start Date)

Date Range for Data Collection (End Date)

Digital Object Identifier

Series name and number

Publication date

2014-01-01

Journal title

IEEE Transactions on Information Theory

Volume number

Issue number

Publisher

Publisher DOI

relationships.isJournalIssueOf

Comments

Recommended citation

Collection