• DocumentCode
    743872
  • Title

    Sparse Subspace Clustering: Algorithm, Theory, and Applications

  • Author

    Elhamifar, E. ; Vidal, Rene

  • Author_Institution
    Dept. of Electr. Eng. & Comput. Sci., Univ. of California, Berkeley, Berkeley, CA, USA
  • Volume
    35
  • Issue
    11
  • fYear
    2013
  • Firstpage
    2765
  • Lastpage
    2781
  • Abstract
    Many real-world problems deal with collections of high-dimensional data, such as images, videos, text, and web documents, DNA microarray data, and more. Often, such high-dimensional data lie close to low-dimensional structures corresponding to several classes or categories to which the data belong. In this paper, we propose and study an algorithm, called sparse subspace clustering, to cluster data points that lie in a union of low-dimensional subspaces. The key idea is that, among the infinitely many possible representations of a data point in terms of other points, a sparse representation corresponds to selecting a few points from the same subspace. This motivates solving a sparse optimization program whose solution is used in a spectral clustering framework to infer the clustering of the data into subspaces. Since solving the sparse optimization program is in general NP-hard, we consider a convex relaxation and show that, under appropriate conditions on the arrangement of the subspaces and the distribution of the data, the proposed minimization program succeeds in recovering the desired sparse representations. The proposed algorithm is efficient and can handle data points near the intersections of subspaces. Another key advantage of the proposed algorithm with respect to the state of the art is that it can deal directly with data nuisances, such as noise, sparse outlying entries, and missing entries, by incorporating the model of the data into the sparse optimization program. We demonstrate the effectiveness of the proposed algorithm through experiments on synthetic data as well as the two real-world problems of motion segmentation and face clustering.
  • Keywords
    computational complexity; convex programming; data structures; minimisation; pattern clustering; convex relaxation; data point clustering; data point representation; face clustering; general NP-hard problem; high-dimensional data collection; minimization program; motion segmentation; sparse optimization program; sparse representation; sparse subspace clustering algorithm; spectral clustering framework; synthetic data; Clustering algorithms; Computer vision; Face; Noise; Optimization; Sparse matrices; Vectors; $(ell_1)$-minimization; High-dimensional data; clustering; convex programming; face clustering; intrinsic low-dimensionality; motion segmentation; principal angles; sparse representation; spectral clustering; subspaces; Algorithms; Artificial Intelligence; Biometry; Face; Humans; Image Interpretation, Computer-Assisted; Pattern Recognition, Automated; Sample Size;
  • fLanguage
    English
  • Journal_Title
    Pattern Analysis and Machine Intelligence, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0162-8828
  • Type

    jour

  • DOI
    10.1109/TPAMI.2013.57
  • Filename
    6482137