Multi-target tracking by on-line learned discriminative appearance models

Cheng-Hao Kuo, Chang Huang, Ramakant Nevatia
2010 2010 IEEE Computer Society Conference on Computer Vision and Pattern Recognition  
We present an approach for online learning of discriminative appearance models for robust multi-target tracking in a crowded scene from a single camera. Although much progress has been made in developing methods for optimal data association, there has been comparatively less work on the appearance models, which are key elements for good performance. Many previous methods either use simple features such as color histograms, or focus on the discriminability between a target and the background
more » ... h does not resolve ambiguities between the different targets. We propose an algorithm for learning a discriminative appearance model for different targets. Training samples are collected online from tracklets within a time sliding window based on some spatial-temporal constraints; this allows the models to adapt to target instances. Learning uses an Ad-aBoost algorithm that combines effective image descriptors and their corresponding similarity measurements. We term the learned models as OLDAMs. Our evaluations indicate that OLDAMs have significantly higher discrimination between different targets than conventional holistic color histograms, and when integrated into a hierarchical association framework, they help improve the tracking accuracy, particularly reducing the false alarms and identity switches. 685 978-1-4244-6985-7/10/$26.00 ©2010 IEEE Authorized licensed use limited to: University of Southern California. Downloaded on August 16,2010 at 17:52:30 UTC from IEEE Xplore. Restrictions apply.
doi:10.1109/cvpr.2010.5540148 dblp:conf/cvpr/KuoHN10 fatcat:frvwgastyna5hbhgvqf3qmfxue