Learning Appearance Based Models: Mixtures of Second Moment Experts
Abstract
This paper describes a new technique for object recognition based on learning appearance models. The image is decomposed into local regions which are described by a new texture representation called "Generalized Second Mo(cid:173) ments" that are derived from the output of multiscale, multiorientation filter banks. Class-characteristic local texture features and their global composition is learned by a hierarchical mixture of experts architecture (Jordan & Jacobs). The technique is applied to a vehicle database consisting of 5 general car categories (Sedan, Van with back-doors, Van without back-doors, old Sedan, and Volkswagen Bug). This is a difficult problem with considerable in-class variation. The new technique has a 6.5% misclassification rate, compared to eigen-images which give 17.4% misclassification rate, and nearest neighbors which give 15 .7% misclassification rate.
Cite
Text
Bregler and Malik. "Learning Appearance Based Models: Mixtures of Second Moment Experts." Neural Information Processing Systems, 1996.Markdown
[Bregler and Malik. "Learning Appearance Based Models: Mixtures of Second Moment Experts." Neural Information Processing Systems, 1996.](https://mlanthology.org/neurips/1996/bregler1996neurips-learning/)BibTeX
@inproceedings{bregler1996neurips-learning,
title = {{Learning Appearance Based Models: Mixtures of Second Moment Experts}},
author = {Bregler, Christoph and Malik, Jitendra},
booktitle = {Neural Information Processing Systems},
year = {1996},
pages = {845-851},
url = {https://mlanthology.org/neurips/1996/bregler1996neurips-learning/}
}