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K Nearest Neighbor Joint Possibility Data Association Algorithm

Authors :
Ming Zhu
Song-lin Chen
Yi-bing Xu
Source :
2010 2nd International Conference on Information Engineering and Computer Science.
Publication Year :
2010
Publisher :
IEEE, 2010.

Abstract

For the problem of tracking multiple targets, the Joint Probabilistic Data Association approach has shown to be very effective in handling clutter and missed detections. However, it tends to coalesce neighboring tracks and ignores the coupling between those tracks. To avoid track coalescenceļ¼Œa K Nearest Neighbor Joint Probabilistic Data Association algorithm is proposed in this paper. Like the Joint Probabilistic Data Association algorithm, the association possibilities of target with every measurement will be computed in the new algorithm, but only the first K measurements whose association probabilities with the target are larger than others' are used to estimate target's state. Finally, through Monte Carlo simulations, it is shown that the new algorithm is able to aviod track coalescence and keeps good tracking performance in heavy clutter and missed detections.

Details

Database :
OpenAIRE
Journal :
2010 2nd International Conference on Information Engineering and Computer Science
Accession number :
edsair.doi...........8e627450a14e9b06c9aab6678722ad0e
Full Text :
https://doi.org/10.1109/iciecs.2010.5677877