Unsupervised Object Class Discovery via Saliency-Guided Multiple Class Learning - Robotics Institute Carnegie Mellon University

Unsupervised Object Class Discovery via Saliency-Guided Multiple Class Learning

Jun-Yan Zhu, Jiajun Wu, Yan Xu, Eric Chang, and Zhuowen Tu
Conference Paper, Proceedings of (CVPR) Computer Vision and Pattern Recognition, pp. 3218 - 3225, June, 2012

Abstract

Discovering object classes from images in a fully unsupervised way is an intrinsically ambiguous task; saliency detection approaches however ease the burden on unsupervised learning. We develop an algorithm for simultaneously localizing objects and discovering object classes via bottom-up (saliency-guided) multiple class learning (bMCL), and make the following contributions: (1) saliency detection is adopted to convert unsupervised learning into multiple instance learning, formulated as bottom-up multiple class learning (bMCL); (2) we utilize the Discriminative EM (DiscEM) to solve our bMCL problem and show DiscEM's connection to the MIL-Boost method[34]; (3) localizing objects, discovering object classes, and training object detectors are performed simultaneously in an integrated framework; (4) significant improvements over the existing methods for multi-class object discovery are observed. In addition, we show single class localization as a special case in our bMCL framework and we also demonstrate the advantage of bMCL over purely data-driven saliency methods.

BibTeX

@conference{Zhu-2012-125703,
author = {Jun-Yan Zhu and Jiajun Wu and Yan Xu and Eric Chang and Zhuowen Tu},
title = {Unsupervised Object Class Discovery via Saliency-Guided Multiple Class Learning},
booktitle = {Proceedings of (CVPR) Computer Vision and Pattern Recognition},
year = {2012},
month = {June},
pages = {3218 - 3225},
}