• Title of article

    Locally adaptive subspace and similarity metric learning for visual data clustering and retrieval

  • Author/Authors

    Fu، نويسنده , , Yun and Li، نويسنده , , Zhu and Huang، نويسنده , , Thomas S. and Katsaggelos، نويسنده , , Aggelos K. Katsaggelos، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2008
  • Pages
    13
  • From page
    390
  • To page
    402
  • Abstract
    Subspace and similarity metric learning are important issues for image and video analysis in the scenarios of both computer vision and multimedia fields. Many real-world applications, such as image clustering/labeling and video indexing/retrieval, involve feature space dimensionality reduction as well as feature matching metric learning. However, the loss of information from dimensionality reduction may degrade the accuracy of similarity matching. In practice, such basic conflicting requirements for both feature representation efficiency and similarity matching accuracy need to be appropriately addressed. In the style of “Thinking Globally and Fitting Locally”, we develop Locally Embedded Analysis (LEA) based solutions for visual data clustering and retrieval. LEA reveals the essential low-dimensional manifold structure of the data by preserving the local nearest neighbor affinity, and allowing a linear subspace embedding through solving a graph embedded eigenvalue decomposition problem. A visual data clustering algorithm, called Locally Embedded Clustering (LEC), and a local similarity metric learning algorithm for robust video retrieval, called Locally Adaptive Retrieval (LAR), are both designed upon the LEA approach, with variations in local affinity graph modeling. For large size database applications, instead of learning a global metric, we localize the metric learning space with kd-tree partition to localities identified by the indexing process. Simulation results demonstrate the effective performance of proposed solutions in both accuracy and speed aspects.
  • Keywords
    manifold , Locally embedded clustering , Subspace learning , Locally adaptive retrieval , Dimensionality reduction , Image and video retrieval , Visual clustering , Similarity matching , Locally embedded analysis
  • Journal title
    Computer Vision and Image Understanding
  • Serial Year
    2008
  • Journal title
    Computer Vision and Image Understanding
  • Record number

    1695293