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To Track or To Detect? An Ensemble Framework for Optimal Selection

Xu Yan, Xuqing Wu, Ioannis A. Kakadiaris, and Shishir K. Shah

Department of Computer Science, University of Houston, Houston, TX 77204-3010, USA
xyan5@uh.edu
xuqingwu9@gmail.com
ioannisk@uh.edu
sshah@central.uh.edu

Abstract. This paper presents a novel approach for multi-target tracking using an ensemble framework that optimally chooses target tracking results from that of independent trackers and a detector at each time step. The ensemble model is designed to select the best candidate scored by a function integrating detection confidence, appearance affinity, and smoothness constraints imposed using geometry and motion information. Parameters of our association score function are discriminatively trained with a max-margin framework. Optimal selection is achieved through a hierarchical data association step that progressively associates candidates to targets. By introducing a second target classifier and using the ranking score from the pre-trained classifier as the detection confidence measure, we add additional robustness against unreliable detections. The proposed algorithm robustly tracks a large number of moving objects in complex scenes with occlusions. We evaluate our approach on a variety of public datasets and show promising improvements over state-of-the-art methods.

LNCS 7576, p. 594 ff.

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