Tracking of Movement Trajectories of Subway Passengers Under Low-Light Conditions
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    Abstract:

    Real-time and precise passenger trajectory tracking is a key technology for achieving intelligent safety management in subway stations. However, subway stations commonly suffer from low-light conditions and frequent passenger occlusions, which often compromise the tracking accuracy of existing mainstream multi-object tracking (MOT) techniques of computer vision in practical applications of subway management. To address this issue, this paper proposes a passenger trajectory tracking method based on low-light image enhancement, aiming to improve tracking performance in low-light subway station environments and frequent passenger occlusions. First, an advanced Retinexformer technique is introduced to restore details and enhance image quality in low-light surveillance videos. Subsequently, two MOT algorithms, i.e., the observation-centric SORT (OC-SORT) and the feature-sparse SparseTrack, are employed for passenger trajectory tracking. Experimental results demonstrate that after image enhancement, the OC-SORT model achieves 73% HOTA and 96% MOTA in low-light conditions, while the SparseTrack model achieves 76% HOTA and 98% MOTA.

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History
  • Received:June 09,2025
  • Revised:July 31,2025
  • Adopted:September 02,2025
  • Online: June 05,2026
  • Published:
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