• DocumentCode
    244890
  • Title

    Low-Rank Common Subspace for Multi-view Learning

  • Author

    Zhengming Ding ; Yun Fu

  • Author_Institution
    Dept. of Electr. & Comput. Eng., Northeastern Univ., Boston, MA, USA
  • fYear
    2014
  • fDate
    14-17 Dec. 2014
  • Firstpage
    110
  • Lastpage
    119
  • Abstract
    Multi-view data is very popular in real-world applications, as different view-points and various types of sensors help to better represent data when fused across views or modalities. Samples from different views of the same class are less similar than those with the same view but different class. We consider a more general case that prior view information of testing data is inaccessible in multi-view learning. Traditional multi-view learning algorithms were designed to obtain multiple view-specific linear projections and would fail without this prior information available. That was because they assumed the probe and gallery views were known in advance, so the correct view-specific projections were to be applied in order to better learn low-dimensional features. To address this, we propose a Low-Rank Common Subspace (LRCS) for multi-view data analysis, which seeks a common low-rank linear projection to mitigate the semantic gap among different views. The low-rank common projection is able to capture compatible intrinsic information across different views and also well-align the within-class samples from different views. Furthermore, with a low-rank constraint on the view-specific projected data and that transformed by the common subspace, the within-class samples from multiple views would concentrate together. Different from the traditional supervised multi-view algorithms, our LRCS works in a weakly supervised way, where only the view information gets observed. Such a common projection can make our model more flexible when dealing with the problem of lacking prior view information of testing data. Two scenarios of experiments, robust subspace learning and transfer learning, are conducted to evaluate our algorithm. Experimental results on several multi-view datasets reveal that our proposed method outperforms state-of-the-art, even when compared with some supervised learning methods.
  • Keywords
    data analysis; learning (artificial intelligence); LRCS; low-rank common subspace; multiview data analysis; multiview learning; Algorithm design and analysis; Face; Linear programming; Noise; Probes; Robustness; Testing; Multi-view; common subspace; low-rank;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Data Mining (ICDM), 2014 IEEE International Conference on
  • Conference_Location
    Shenzhen
  • ISSN
    1550-4786
  • Print_ISBN
    978-1-4799-4303-6
  • Type

    conf

  • DOI
    10.1109/ICDM.2014.29
  • Filename
    7023328