Discriminating Deformable Shape Classes

Abstract

We present and empirically test a novel approach for categorizing 3-D free form ob- ject shapes represented by range data . In contrast to traditional surface-signature based systems that use alignment to match specific objects, we adapted the newly introduced symbolic-signature representation to classify deformable shapes [10]. Our approach con- structs an abstract description of shape classes using an ensemble of classifiers that learn object class parts and their corresponding geometrical relationships from a set of numeric and symbolic descriptors. We used our classification engine in a series of large scale dis- crimination experiments on two well-defined classes that share many common distinctive features. The experimental results suggest that our method outperforms traditional numeric signature-based methodologies. 1

Cite

Text

Ruiz-correa et al. "Discriminating Deformable Shape Classes." Neural Information Processing Systems, 2003.

Markdown

[Ruiz-correa et al. "Discriminating Deformable Shape Classes." Neural Information Processing Systems, 2003.](https://mlanthology.org/neurips/2003/ruizcorrea2003neurips-discriminating/)

BibTeX

@inproceedings{ruizcorrea2003neurips-discriminating,
  title     = {{Discriminating Deformable Shape Classes}},
  author    = {Ruiz-correa, Salvador and Shapiro, Linda G. and Meila, Marina and Berson, Gabriel},
  booktitle = {Neural Information Processing Systems},
  year      = {2003},
  pages     = {1491-1498},
  url       = {https://mlanthology.org/neurips/2003/ruizcorrea2003neurips-discriminating/}
}