English

Visual object categorization with new keypoint-based adaBoost features

Computer Vision and Pattern Recognition 2009-10-08 v1 Machine Learning

Abstract

We present promising results for visual object categorization, obtained with adaBoost using new original ?keypoints-based features?. These weak-classifiers produce a boolean response based on presence or absence in the tested image of a ?keypoint? (a kind of SURF interest point) with a descriptor sufficiently similar (i.e. within a given distance) to a reference descriptor characterizing the feature. A first experiment was conducted on a public image dataset containing lateral-viewed cars, yielding 95% recall with 95% precision on test set. Preliminary tests on a small subset of a pedestrians database also gives promising 97% recall with 92 % precision, which shows the generality of our new family of features. Moreover, analysis of the positions of adaBoost-selected keypoints show that they correspond to a specific part of the object category (such as ?wheel? or ?side skirt? in the case of lateral-cars) and thus have a ?semantic? meaning. We also made a first test on video for detecting vehicles from adaBoostselected keypoints filtered in real-time from all detected keypoints.

Keywords

Cite

@article{arxiv.0910.1294,
  title  = {Visual object categorization with new keypoint-based adaBoost features},
  author = {Taoufik Bdiri and Fabien Moutarde and Bruno Steux},
  journal= {arXiv preprint arXiv:0910.1294},
  year   = {2009}
}
R2 v1 2026-06-21T13:55:20.793Z