• DocumentCode
    42593
  • Title

    A Regularized Approach for Geodesic-Based Semisupervised Multimanifold Learning

  • Author

    Mingyu Fan ; Xiaoqin Zhang ; Zhouchen Lin ; Zhongfei Zhang ; Hujun Bao

  • Author_Institution
    Inst. of Intell. Syst. & Decision, Wenzhou, China
  • Volume
    23
  • Issue
    5
  • fYear
    2014
  • fDate
    May-14
  • Firstpage
    2133
  • Lastpage
    2147
  • Abstract
    Geodesic distance, as an essential measurement for data dissimilarity, has been successfully used in manifold learning. However, most geodesic distance-based manifold learning algorithms have two limitations when applied to classification: 1) class information is rarely used in computing the geodesic distances between data points on manifolds and 2) little attention has been paid to building an explicit dimension reduction mapping for extracting the discriminative information hidden in the geodesic distances. In this paper, we regard geodesic distance as a kind of kernel, which maps data from linearly inseparable space to linear separable distance space. In doing this, a new semisupervised manifold learning algorithm, namely regularized geodesic feature learning algorithm, is proposed. The method consists of three techniques: a semisupervised graph construction method, replacement of original data points with feature vectors which are built by geodesic distances, and a new semisupervised dimension reduction method for feature vectors. Experiments on the MNIST, USPS handwritten digit data sets, MIT CBCL face versus nonface data set, and an intelligent traffic data set show the effectiveness of the proposed algorithm.
  • Keywords
    face recognition; feature extraction; MIT CBCL; MNIST; USPS handwritten digit data sets; data dissimilarity; data points; dimension reduction mapping; feature vectors; geodesic distance; intelligent traffic data set; linear separable distance space; regularized geodesic feature learning algorithm; semisupervised graph construction method; semisupervised multimanifold learning; Algorithm design and analysis; Educational institutions; Feature extraction; Kernel; Manifolds; Principal component analysis; Vectors; Feature extraction; image classification; manifold learning; semisupervised learning;
  • fLanguage
    English
  • Journal_Title
    Image Processing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1057-7149
  • Type

    jour

  • DOI
    10.1109/TIP.2014.2312643
  • Filename
    6775307