• DocumentCode
    2913798
  • Title

    Accelerated low-rank visual recovery by random projection

  • Author

    Mu, Yadong ; Dong, Jian ; Yuan, Xiaotong ; Yan, Shuicheng

  • Author_Institution
    Dept. of Electr. & Comput. Eng., Nat. Univ. of Singapore, Singapore, Singapore
  • fYear
    2011
  • fDate
    20-25 June 2011
  • Firstpage
    2609
  • Lastpage
    2616
  • Abstract
    Exact recovery from contaminated visual data plays an important role in various tasks. By assuming the observed data matrix as the addition of a low-rank matrix and a sparse matrix, theoretic guarantee exists under mild conditions for exact data recovery. Practically matrix nuclear norm is adopted as a convex surrogate of the non-convex matrix rank function to encourage low-rank property and serves as the major component of recently-proposed Robust Principal Component Analysis (R-PCA). Recent endeavors have focused on enhancing the scalability of R-PCA to large-scale datasets, especially mitigating the computational burden of frequent large-scale Singular Value Decomposition (SVD) inherent with the nuclear norm optimization. In our proposed scheme, the nuclear norm of an auxiliary matrix is minimized instead, which is related to the original low-rank matrix by random projection. By design, the modified optimization entails SVD on matrices of much smaller scale, as compared to the original optimization problem. Theoretic analysis well justifies the proposed scheme, along with greatly reduced optimization complexity. Both qualitative and quantitative studies are provided on various computer vision benchmarks to validate its effectiveness, including facial shadow removal, surveillance background modeling and large-scale image tag transduction. It is also highlighted that the proposed solution can serve as a general principal to accelerate many other nuclear norm oriented problems in numerous tasks.
  • Keywords
    computer vision; principal component analysis; singular value decomposition; R-PCA; SVD; accelerated low-rank visual recovery; computer vision benchmarks; convex surrogate; exact data recovery; facial shadow removal; large-scale image tag transduction; low-rank matrix; nonconvex matrix rank; nuclear norm optimization; observed data matrix; optimization complexity; random projection; robust principal component analysis; singular value decomposition; sparse matrix; surveillance background modeling; Acceleration; Algorithm design and analysis; Complexity theory; Matrix decomposition; Optimization; Sparse matrices; Visualization;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Computer Vision and Pattern Recognition (CVPR), 2011 IEEE Conference on
  • Conference_Location
    Providence, RI
  • ISSN
    1063-6919
  • Print_ISBN
    978-1-4577-0394-2
  • Type

    conf

  • DOI
    10.1109/CVPR.2011.5995369
  • Filename
    5995369