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Spectral grouping using the Nyström method (2004)

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by Charless Fowlkes , Serge Belongie , Fan Chung , Jitendra Malik
Venue:IEEE Transactions on Pattern Analysis and Machine Intelligence
Citations:316 - 1 self
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BibTeX

@ARTICLE{Fowlkes04spectralgrouping,
    author = {Charless Fowlkes and Serge Belongie and Fan Chung and Jitendra Malik},
    title = {Spectral grouping using the Nyström method},
    journal = {IEEE Transactions on Pattern Analysis and Machine Intelligence},
    year = {2004},
    volume = {26},
    pages = {2004}
}

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Abstract

Spectral graph theoretic methods have recently shown great promise for the problem of image segmentation. However, due to the computational demands of these approaches, applications to large problems such as spatiotemporal data and high resolution imagery have been slow to appear. The contribution of this paper is a method that substantially reduces the computational requirements of grouping algorithms based on spectral partitioning making it feasible to apply them to very large grouping problems. Our approach is based on a technique for the numerical solution of eigenfunction problems knownas the Nyström method. This method allows one to extrapolate the complete grouping solution using only a small number of "typical" samples. In doing so, we leverage the fact that there are far fewer coherent groups in a scene than pixels.

Keyphrases

nystr method    eigenfunction problem    numerical solution    computational requirement    spectral graph theoretic method    image segmentation    large problem    complete grouping solution    spatiotemporal data    typical sample    coherent group    computational demand    great promise    high resolution imagery    small number   

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