RASL: Robust Alignment by Sparse and Low-Rank Decomposition for Linearly Correlated Images

Tsinghua University · University of Illinois Urbana-Champaign · +1 more institution

PubMed
Indexed incrossrefpubmed

Abstract

This paper studies the problem of simultaneously aligning a batch of linearly correlated images despite gross corruption (such as occlusion). Our method seeks an optimal set of image domain transformations such that the matrix of transformed images can be decomposed as the sum of a sparse matrix of errors and a low-rank matrix of recovered aligned images. We reduce this extremely challenging optimization problem to a sequence of convex programs that minimize the sum of l1-norm and nuclear norm of the two component matrices, which can be efficiently solved by scalable convex optimization techniques. We verify the efficacy of the proposed robust alignment algorithm with extensive experiments on both controlled…

Citation impact

849
total citations
FWCI
98.64
Percentile
100%
References
58
Citations per year

Authors

5

Topics & keywords

Keywords
  • Matrix norm
  • Rank (graph theory)
  • Convex optimization
  • Computer science
  • Matrix (chemical analysis)
  • Matrix decomposition
  • Sparse matrix
  • Robust principal component analysis
UN Sustainable Development Goals
  • Peace, Justice and strong institutions
No related works found for this paper.