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    Deep reconstruction models for image set classification

    Access Status
    Fulltext not available
    Authors
    Hayat, M.
    Bennamoun, M.
    An, Senjian
    Date
    2015
    Type
    Journal Article
    
    Metadata
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    Citation
    Hayat, M. and Bennamoun, M. and An, S. 2015. Deep reconstruction models for image set classification. IEEE Transactions on Pattern Analysis and Machine Intelligence. 37 (4): pp. 713-727.
    Source Title
    IEEE Transactions on Pattern Analysis and Machine Intelligence
    DOI
    10.1109/TPAMI.2014.2353635
    ISSN
    0162-8828
    School
    School of Electrical Engineering, Computing and Mathematical Science (EECMS)
    URI
    http://hdl.handle.net/20.500.11937/70275
    Collection
    • Curtin Research Publications
    Abstract

    Image set classification finds its applications in a number of real-life scenarios such as classification from surveillance videos, multi-view camera networks and personal albums. Compared with single image based classification, it offers more promises and has therefore attracted significant research attention in recent years. Unlike many existing methods which assume images of a set to lie on a certain geometric surface, this paper introduces a deep learning framework which makes no such prior assumptions and can automatically discover the underlying geometric structure. Specifically, a Template Deep Reconstruction Model (TDRM) is defined whose parameters are initialized by performing unsupervised pre-training in a layer-wise fashion using Gaussian Restricted Boltzmann Machines (GRBMs). The initialized TDRM is then separately trained for images of each class and class-specific DRMs are learnt. Based on the minimum reconstruction errors from the learnt class-specific models, three different voting strategies are devised for classification. Extensive experiments are performed to demonstrate the efficacy of the proposed framework for the tasks of face and object recognition from image sets. Experimental results show that the proposed method consistently outperforms the existing state of the art methods.

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