• DocumentCode
    2920519
  • Title

    On deep generative models with applications to recognition

  • Author

    Ranzato, Marc Aurelio ; Susskind, Joshua ; Mnih, Volodymyr ; Hinton, Geoffrey

  • Author_Institution
    Dept. of Comput. Sci., Univ. of Toronto, Toronto, ON, Canada
  • fYear
    2011
  • fDate
    20-25 June 2011
  • Firstpage
    2857
  • Lastpage
    2864
  • Abstract
    The most popular way to use probabilistic models in vision is first to extract some descriptors of small image patches or object parts using well-engineered features, and then to use statistical learning tools to model the dependencies among these features and eventual labels. Learning probabilistic models directly on the raw pixel values has proved to be much more difficult and is typically only used for regularizing discriminative methods. In this work, we use one of the best, pixel-level, generative models of natural images-a gated MRF-as the lowest level of a deep belief network (DBN) that has several hidden layers. We show that the resulting DBN is very good at coping with occlusion when predicting expression categories from face images, and it can produce features that perform comparably to SIFT descriptors for discriminating different types of scene. The generative ability of the model also makes it easy to see what information is captured and what is lost at each level of representation.
  • Keywords
    belief networks; feature extraction; image representation; learning (artificial intelligence); SIFT descriptor; deep belief network; deep generative model; face image; gated MRF; image patch; learning probabilistic model; natural image; statistical learning tool; Adaptation models; Computational modeling; Feature extraction; Input variables; Logic gates; Tiles; Training;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Computer Vision and Pattern Recognition (CVPR), 2011 IEEE Conference on
  • Conference_Location
    Providence, RI
  • ISSN
    1063-6919
  • Print_ISBN
    978-1-4577-0394-2
  • Type

    conf

  • DOI
    10.1109/CVPR.2011.5995710
  • Filename
    5995710