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A Dynamic Pruning and Feature Selection Strategy for Real-Time Tracking
Taipei, Taiwan March 25-March 30
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/AINA.2005.2219th International Conference on Adva ...
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D. Frank Hsu, Fordham University
Damian M. Lyons, Fordham University
Automated video tracking is useful in a number of applications such as surveillance, multisensor networks, robotics and virtual reality. In this paper we investigate an approach to tracking based on fusing the output of a collection of video trackers, each attending to a different feature or cue on the target. We show both theoretically and experimentally that the method used to prune the growth of target hypotheses can have a great impact on the trackers performance, and indirectly, change the benefit of using linear score combination as opposed to a non-linear rank combination for fusion. We also show that the rank-score graph defined by Hsu and Taksa can be used to select a subset of features to fuse to reduce classification error.
Index Terms:
Sensor Fusion, Target Tracking, Multisensor Networks, Video Analysis, Sorting/Searching
Citation:
D. Frank Hsu, Damian M. Lyons, "A Dynamic Pruning and Feature Selection Strategy for Real-Time Tracking," aina, vol. 1, pp.117-124, 19th International Conference on Advanced Information Networking and Applications (AINA'05) Volume 1 (AINA papers), 2005
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