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2006
IEEE

The Generalized Shape Distributions for Shape Matching and Analysis

9 years 2 months ago
The Generalized Shape Distributions for Shape Matching and Analysis
This paper presents a novel 3D shape descriptor "The Generalized Shape Distributions" for effective shape matching and analysis, by taking advantage of both local and global shape signatures. We start this process by generating spin images on meshes. These local shape descriptors are then quantized via k-means clustering. The key contribution of this paper is to represent a global 3D shape as the spatial configuration of a set of specific local shapes. We achieve this goal by computing the distributions of the Euclidean distance of pairs of local shape clusters. Because of the spatial, sparse distribution of local shapes defined over a 3D model, an indexing data structure is adopted to reduce the space complexity of the proposed shape descriptor. The technical merits of our new approach are at least two-fold: (1) It is robust to non-trivial shape occlusions and deformations, since there are statistically a large number of chances that some local shape signatures and their sp...
Yi Liu, Hongbin Zha, Hong Qin
Added 12 Jun 2010
Updated 12 Jun 2010
Type Conference
Year 2006
Where SMI
Authors Yi Liu, Hongbin Zha, Hong Qin
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