Feature detection of triangular meshes based on tensor voting theory |
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Authors: | Hyun Soo Kim |
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Affiliation: | Gwangju Institute of Science and Technology, 1 Oryong-dong, Buk-gu, Gwangju 500-712, Republic of Korea |
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Abstract: | This paper presents n-dimensional feature recognition of triangular meshes that can handle both geometric properties and additional attributes such as color information of a physical object. Our method is based on a tensor voting technique for classifying features and integrates a clustering and region growing methodology for segmenting a mesh into sub-patches. We classify a feature into a corner, a sharp edge and a face. Then, finally we detect features via region merging and cleaning processes. Our feature detection shows good performance with efficiency for various dimensional models. |
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Keywords: | Triangular mesh Feature detection Segmentation Tensor voting Clustering |
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