Probabilistic Fingerprints for Shapes

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Date
2006
Journal Title
Journal ISSN
Volume Title
Publisher
The Eurographics Association
Abstract
We propose a new probabilistic framework for the efficient estimation of similarity between 3D shapes. Our framework is based on local shape signatures and is designed to allow for quick pruning of dissimilar shapes, while guaranteeing not to miss any shape with significant similarities to the query model in shape database retrieval applications. Since directly evaluating 3D similarity for large collections of signatures on shapes is expensive and impractical, we propose a suitable but compact approximation based on probabilistic fingerprints which are computed from the shape signatures using Rabin s hashing scheme and a small set of random permutations. We provide a probabilistic analysis that shows that while the preprocessing time depends on the complexity of the model, the fingerprint size and hence the query time depends only on the desired confidence in our estimated similarity. Our method is robust to noise, invariant to rigid transforms, handles articulated deformations, and effectively detects partial matches. In addition, it provides important hints about correspondences across shapes which can then significantly benefit other algorithms that explicitly align the models. We demonstrate the utility of our method on a wide variety of geometry processing applications.
Description

        
@inproceedings{
10.2312:SGP/SGP06/121-130
, booktitle = {
Symposium on Geometry Processing
}, editor = {
Alla Sheffer and Konrad Polthier
}, title = {{
Probabilistic Fingerprints for Shapes
}}, author = {
Mitra, Niloy J.
 and
Guibas, Leonidas
 and
Giesen, Joachim
 and
Pauly, Mark
}, year = {
2006
}, publisher = {
The Eurographics Association
}, ISSN = {
1727-8384
}, ISBN = {
3-905673-24-X
}, DOI = {
10.2312/SGP/SGP06/121-130
} }
Citation