Publication: 3D model retrieval using probability density-based shape descriptors
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KU-Authors
KU Authors
Co-Authors
Akgul, Ceyhun Burak
Sankur, Buelent
Schmitt, Francis
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Abstract
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.
Source
Publisher
IEEE Computer Society
Subject
Computer science, Artificial intelligence, Electrical and electronic engineering
Citation
Has Part
Source
IEEE Transactions on Pattern Analysis and Machine Intelligence
Book Series Title
Edition
DOI
10.1109/TPAMI.2009.25