Abstract
Although there is significant progress and wide applications in multi object tracking technology in recent years, the occlusion problem has always been an obstacle, especially in subway systems with dense crowds, high mobility, and narrow spaces. This difficulty greatly affects the accuracy of tracking and identification. Aiming at the problem of crowd occlusion in subway stations, based on the FairMOT [1], we improve the model and apply it to the subway so that it can count the number of people moving in different directions and enrich the data of pedestrian flow. However, FairMOT still cannot solve the occlusion problem in subway scenes because it cannot handle missing pedestrians effectively. Therefore, we propose three methods to solve the occlusion problem, including a new convolution branch, feature matching and handling of missing. Then, we show how to count the number of people moving in different directions. Experimental results demonstrate that our innovation can effectively improve the tracking performance not only in the case of short-distance double cross occlusion but also for long-distance dense crowd occlusion and building occlusion.
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Acknowledgment
This work was supported in part by the Shenzhen Science and Technology Program under Grant JCYJ2018030512 3922293, JCYJ20190808143415801. The authors would also like to thank the anonymous reviewers.
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Wang, G., Yang, Y., Zhong, X., Yang, Y. (2022). An Improved FairMOT Method for Crowd Tracking and Counting in Subway Passages. In: Zhang, Z. (eds) 2021 6th International Conference on Intelligent Transportation Engineering (ICITE 2021). ICITE 2021. Lecture Notes in Electrical Engineering, vol 901. Springer, Singapore. https://doi.org/10.1007/978-981-19-2259-6_11
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DOI: https://doi.org/10.1007/978-981-19-2259-6_11
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