Ensemble of Exemplar-SVMs for Object Detection and Beyond - Robotics Institute Carnegie Mellon University

Ensemble of Exemplar-SVMs for Object Detection and Beyond

Tomasz Malisiewicz, Abhinav Gupta, and Alexei A. Efros
Conference Paper, Proceedings of (ICCV) International Conference on Computer Vision, pp. 89 - 96, November, 2011

Abstract

This paper proposes a conceptually simple but surprisingly powerful method which combines the effectiveness of a discriminative object detector with the explicit correspondence offered by a nearest-neighbor approach. The method is based on training a separate linear SVM classifier for every exemplar in the training set. Each of these Exemplar-SVMs is thus defined by a single positive instance and millions of negatives. While each detector is quite specific to its exemplar, we empirically observe that an ensemble of such Exemplar-SVMs offers surprisingly good generalization. Our performance on the PASCAL VOC detection task is on par with the much more complex latent part-based model of Felzenszwalb et al., at only a modest computational cost increase. But the central benefit of our approach is that it creates an explicit association between each detection and a single training exemplar. Because most detections show good alignment to their associated exemplar, it is possible to transfer any available exemplar meta-data (segmentation, geometric structure, 3D model, etc.) directly onto the detections, which can then be used as part of overall scene understanding.

BibTeX

@conference{Malisiewicz-2011-7405,
author = {Tomasz Malisiewicz and Abhinav Gupta and Alexei A. Efros},
title = {Ensemble of Exemplar-SVMs for Object Detection and Beyond},
booktitle = {Proceedings of (ICCV) International Conference on Computer Vision},
year = {2011},
month = {November},
pages = {89 - 96},
keywords = {object detection, machine learning, geometry transfer},
}