Context-dependent kernel design for object matching and recognition (2007)
| Venue: | Research Report N 2007D018, ENST Paris, ParisTech |
| Citations: | 2 - 2 self |
BibTeX
@INPROCEEDINGS{Sahbi07context-dependentkernel,
author = {Hichem Sahbi and Jean-yves Audibert and Jaonary Rabarisoa and Renaud Keriven},
title = {Context-dependent kernel design for object matching and recognition},
booktitle = {Research Report N 2007D018, ENST Paris, ParisTech},
year = {2007}
}
OpenURL
Abstract
The success of kernel methods including support vector networks (SVMs) strongly depends on the design of appropriate kernels. While initially kernels were designed in order to handle fixed-length data, their extension to unordered, variable-length data became more than necessary for real pattern recognition problems such as object recognition and bioinformatics. We focus in this paper on object recognition using a new type of kernel referred to as “context-dependent”. Objects, seen as constellations of local features (interest points, regions, etc.), are matched by minimizing an energy function mixing (1) a fidelity term which measures the quality of feature matching, (2) a neighborhood criteria which captures the object geometry and (3) a regularization term. We will show that the fixed-point of this energy is a “contextdependent” kernel (“CDK”) which also satisfies the Mercer condition. Experiments conducted on object recognition show that when plugging our kernel in SVMs, we clearly outperform SVMs with “context-free ” kernels. 1.







