• DocumentCode
    2396762
  • Title

    Auto-context and its application to high-level vision tasks

  • Author

    Tu, Zhuowen

  • Author_Institution
    Lab. of Neuro Imaging, Univ. of California, Los Angeles, CA
  • fYear
    2008
  • fDate
    23-28 June 2008
  • Firstpage
    1
  • Lastpage
    8
  • Abstract
    The notion of using context information for solving high-level vision problems has been increasingly realized in the field. However, how to learn an effective and efficient context model, together with the image appearance, remains mostly unknown. The current literature using Markov random fields (MRFs) and conditional random fields (CRFs) often involves specific algorithm design, in which the modeling and computing stages are studied in isolation. In this paper, we propose an auto-context algorithm. Given a set of training images and their corresponding label maps, we first learn a classifier on local image patches. The discriminative probability (or classification confidence) maps by the learned classifier are then used as context information, in addition to the original image patches, to train a new classifier. The algorithm then iterates to approach the ground truth. Auto-context learns an integrated low-level and context model, and is very general and easy to implement. Under nearly the identical parameter setting in the training, we apply the algorithm on three challenging vision applications: object segmentation, human body configuration, and scene region labeling. It typically takes about 30 ~ 70 seconds to run the algorithm in testing. Moreover, the scope of the proposed algorithm goes beyond high-level vision. It has the potential to be used for a wide variety of problems of multi-variate labeling.
  • Keywords
    Markov processes; computer vision; image classification; image segmentation; Markov random fields; autocontext algorithm; conditional random fields; context information; high-level vision problems; high-level vision tasks; human body configuration; integrated low-level-context model; local image patches; multivariate labeling; object segmentation; scene region labeling; training images; Algorithm design and analysis; Biological system modeling; Context modeling; Hidden Markov models; Labeling; Layout; Markov random fields; Neuroimaging; Shape; Statistics;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Computer Vision and Pattern Recognition, 2008. CVPR 2008. IEEE Conference on
  • Conference_Location
    Anchorage, AK
  • ISSN
    1063-6919
  • Print_ISBN
    978-1-4244-2242-5
  • Electronic_ISBN
    1063-6919
  • Type

    conf

  • DOI
    10.1109/CVPR.2008.4587436
  • Filename
    4587436