• DocumentCode
    2607388
  • Title

    Adaptive Feature Integration for Segmentation of 3D Data by Unsupervised Density Estimation

  • Author

    Cristani, Marco ; Castellani, Umberto ; Murino, Vittorio

  • Author_Institution
    Dipt. di Informatica, Verona Univ.
  • Volume
    4
  • fYear
    0
  • fDate
    0-0 0
  • Firstpage
    21
  • Lastpage
    24
  • Abstract
    In this paper, a novel unsupervised approach for the segmentation of unorganized 3D points sets is proposed. The method derives by the mean shift clustering paradigm devoted to separate the modes of a multimodal density by using a kernel-based technique. Here, the attention is focused on the selection of the kernel bandwidth which typically strongly affects the level of accuracy of the segmentation results. In particular, a set of geometric features is computed from each 3D point of the given data. This set is projected onto a number of independent sub-spaces, each one associated to a different estimated feature, and overall forming a joint multidimensional (feature) space. In this space, we propose a method for selecting the best multidimensional kernel bandwidth in an automatic fashion, based on stability criteria. The final kernel considers each sub-space in an adaptive way in relation to the discrimination power of each feature, leading to accurate results when dealing with different types of 3D data
  • Keywords
    feature extraction; geometry; image segmentation; pattern clustering; 3D data segmentation; adaptive feature integration; geometric features; kernel bandwidth; kernel-based technique; mean shift clustering; multimodal density; unorganized 3D points sets; unsupervised density estimation; Adaptive optics; Bandwidth; Data mining; Focusing; Image segmentation; Kernel; Multidimensional systems; Probability density function; Robustness; Stability criteria;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Pattern Recognition, 2006. ICPR 2006. 18th International Conference on
  • Conference_Location
    Hong Kong
  • ISSN
    1051-4651
  • Print_ISBN
    0-7695-2521-0
  • Type

    conf

  • DOI
    10.1109/ICPR.2006.220
  • Filename
    1699773