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3D model retrieval using probability density-based shape descriptors

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Akgul, Ceyhun Burak
Sankur, Buelent
Schmitt, Francis

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We address content-based retrieval of complete 3D object models by a probabilistic generative description of local shape properties. The proposed shape description framework characterizes a 3D object with sampled multivariate probability density functions of its local surface features. This density-based descriptor can be efficiently computed via kernel density estimation (KDE) coupled with fast Gauss transform. The nonparametric KDE technique allows reliable characterization of a diverse set of shapes and yields descriptors which remain relatively insensitive to small shape perturbations and mesh resolution. Density-based characterization also induces a permutation property which can be used to guarantee invariance at the shape matching stage. As proven by extensive retrieval experiments on several 3D databases, our framework provides state-of-the-art discrimination over a broad and heterogeneous set of shape categories.

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IEEE Computer Society

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Computer science, Artificial intelligence, Electrical and electronic engineering

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IEEE Transactions on Pattern Analysis and Machine Intelligence

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10.1109/TPAMI.2009.25

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