Recursive Robust PCA or Recursive Sparse Recovery in Large but Structured Noise

dc.contributor.author Qiu, Chenlu
dc.contributor.author Hogben, Leslie
dc.contributor.author Lois, Brian
dc.contributor.author Vaswani, Namrata
dc.contributor.department Department of Electrical and Computer Engineering
dc.contributor.department Mathematics
dc.date 2018-02-18T06:10:14.000
dc.date.accessioned 2020-06-30T06:01:03Z
dc.date.available 2020-06-30T06:01:03Z
dc.date.copyright Wed Jan 01 00:00:00 UTC 2014
dc.date.issued 2014-08-01
dc.description.abstract <p>This paper studies the recursive robust principal components analysis problem. If the outlier is the signal-of-interest, this problem can be interpreted as one of recursively recovering a time sequence of sparse vectors, St, in the presence of large but structured noise, Lt. The structure that we assume on Lt is that Lt is dense and lies in a low-dimensional subspace that is either fixed or changes slowly enough. A key application where this problem occurs is in video surveillance where the goal is to separate a slowly changing background (Lt) from moving foreground objects (St) on-the-fly. To solve the above problem, in recent work, we introduced a novel solution called recursive projected CS (ReProCS). In this paper, we develop a simple modification of the original ReProCS idea and analyze it. This modification assumes knowledge of a subspace change model on the Lt's. Under mild assumptions and a denseness assumption on the unestimated part of the subspace of Lt at various times, we show that, with high probability, the proposed approach can exactly recover the support set of St at all times, and the reconstruction errors of both St and Lt are upper bounded by a time-invariant and small value. In simulation experiments, we observe that the last assumption holds as long as there is some support change of St every few frames.</p>
dc.description.comments <p>This is a manuscript of an article published as Qiu, Chenlu, Namrata Vaswani, Brian Lois, and Leslie Hogben. "Recursive Robust PCA or Recursive Sparse Recovery in Large but Structured Noise." <em>IEEE Transactions on Information Theory</em> 60, no. 8 (2014): 5007-5039. DOI: <a href="http://dx.doi.org/10.1109/TIT.2014.2331344" target="_blank">10.1109/TIT.2014.2331344</a>. Posted with permission.</p>
dc.format.mimetype application/pdf
dc.identifier archive/lib.dr.iastate.edu/math_pubs/93/
dc.identifier.articleid 1098
dc.identifier.contextkey 9893859
dc.identifier.s3bucket isulib-bepress-aws-west
dc.identifier.submissionpath math_pubs/93
dc.identifier.uri https://dr.lib.iastate.edu/handle/20.500.12876/54693
dc.language.iso en
dc.source.bitstream archive/lib.dr.iastate.edu/math_pubs/93/2013_Hogben_RecursiveRobust.pdf|||Sat Jan 15 02:31:12 UTC 2022
dc.source.uri 10.1109/TIT.2014.2331344
dc.subject.disciplines Algebra
dc.subject.disciplines Discrete Mathematics and Combinatorics
dc.subject.disciplines Signal Processing
dc.subject.disciplines Systems and Communications
dc.subject.keywords Vectors
dc.subject.keywords Principal component analysis
dc.subject.keywords Robustness
dc.subject.keywords Linear matrix inequalities
dc.subject.keywords Noise
dc.subject.keywords Sparse matrices
dc.subject.keywords Eigenvalues and eigenfunctions
dc.title Recursive Robust PCA or Recursive Sparse Recovery in Large but Structured Noise
dc.type article
dc.type.genre article
dspace.entity.type Publication
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