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  • Multi-scale Adaptive Image Representations

    Tue, Dec 11, 2007 @ 10:30 AM - 11:30 AM

    Ming Hsieh Department of Electrical and Computer Engineering

    Conferences, Lectures, & Seminars


    Doru C. Balcan,
    Carnegie Mellon UniversityAbstract:
    Multi-scale representations, such as those based on wavelets, have been successful in efficiently
    describing intrinsic structure in images, and consequently have lead to the emergence of excellent
    image coders. Nevertheless, using any fixed representation limits the best achievable performance
    when encoding images of a given class, because all statistical information about that class is simply
    ignored. An adaptive representation would then be more appropriate in this setting. One such
    example is independent component analysis (ICA), a statistical method that computes a linear
    representation whose coefficients have minimum entropy.
    In this talk, I will introduce a hybrid image representation method called Multi-scale ICA, which
    derives an adaptive basis for each of the wavelet decomposition sub-bands. A direct comparison of
    the rate-distortion curves obtained by coefficient scalar quantization to various levels of precision
    shows the improvement in terms of efficiency over the wavelet representation. One other merit of this
    approach is its potential use to derive adaptive representations for large-size images, where existing
    methods fail because of computational and sample complexity limitations. We can therefore interpret
    the proposed method both as a nonparametric adaptive extension of wavelet representations, and as
    a multi-scale generalization of ICA. This is joint work with Michael Lewicki.Speaker Bio:
    Doru C. Balcan received the B.S. degree in computer science, in 2000, and the M.S. degree in
    applied computer science, in 2002, from the Faculty of Mathematics, University of Bucharest,
    Romania. He is currently pursuing Ph.D. studies in computer science at Carnegie Mellon University,
    Pittsburgh, PA. His research is focused on developing algorithms for efficient and robust signal
    processing and coding. More exactly, he is interested in techniques that exploit the mathematical
    structure of problems commonly occurring in image and audio encoding, to produce representations
    that are compact, resilient to noise, and fast to compute.Hosted by: Prof: C-C Jay Kuo

    Location: Hughes Aircraft Electrical Engineering Center (EEB) - 248

    Audiences: Everyone Is Invited

    Contact: Talyia Veal

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