Dynamic Track Management in MHT for Pedestrian Tracking Using Laser Range Finder

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Abstract

Real time pedestrian tracking could be one of the important features for autonomous navigation. Laser Range Finder (LRF) produces accurate pedestrian data but a problem occurs when a pedestrian is represented by multiple clusters which affect the overall tracking process. Multiple Hypothesis Tracking (MHT) is a proven method to solve tracking problem but suffers a large computational cost. In this paper, a multilevel clustering of LRF data is proposed to improve the accuracy of a tracking system by adding another clustering level after the feature extraction process. A Dynamic Track Management (DTM) is introduced in MHT with multiple motion models to perform a track creation, association, and deletion. The experimental results from real time implementation prove that the proposed multiclustering is capable of producing a better performance with less computational complexity for a track management process. The proposed Dynamic Track Management is able to solve the tracking problem with lower computation time when dealing with occlusion, crossed track, and track deletion.

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Abd Rahman, A. H., Zamzuri, H., Mazlan, S. A., Abdul Rahman, M. A., Yamamoto, Y., & Samsuri, S. B. (2015). Dynamic Track Management in MHT for Pedestrian Tracking Using Laser Range Finder. Mathematical Problems in Engineering, 2015. https://doi.org/10.1155/2015/545204

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