4.7 Article

Long-Term Tracking With Deep Tracklet Association

Journal

IEEE TRANSACTIONS ON IMAGE PROCESSING
Volume 29, Issue -, Pages 6694-6706

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIP.2020.2993073

Keywords

Target tracking; Trajectory; Radar tracking; Detectors; Machine learning; Robustness; Multi-object tracking (MOT); tracking-by-tracklet; multiple hypothesis tracking (MHT); deep association

Funding

  1. National Key RAMP
  2. D Program of China [2018YFB2100500]
  3. National Natural Science Foundation of China [61861166002, 61872025, 61635002]
  4. Science and Technology Development Fund, Macau SAR [0001/2018/AFJ]
  5. Fundamental Research Funds for the Central Universities
  6. Open Fund of the State Key Laboratory of Software Development Environment [SKLSDE2019ZX-04]

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Recently, most multiple object tracking (MOT) algorithms adopt the idea of tracking-by-detection. Relevant research shows that the performance of the detector obviously affects the tracker, while the improvement of detector is gradually slowing down in recent years. Therefore, trackers using tracklet (short trajectory) are proposed to generate more complete trajectories. Although there are various tracklet generation algorithms, the fragmentation problem still often occurs in crowded scenes. In this paper, we introduce an iterative clustering method that generates more tracklets while maintaining high confidence. Our method shows robust performance on avoiding internal identity switch. Then we propose a deep association method for tracklet association. In terms of motion and appearance, we construct motion evaluation network (MEN) and appearance evaluation network (AEN) to learn long-term features of tracklets for association. In order to explore more robust features of tracklets, a tracklet-based training mechanism is also introduced. Tracklet groups are used as the input of the networks instead of discrete detections. Experimental results show that our training method enhances the performance of the networks. In addition, our tracking framework generates more complete trajectories while maintaining the unique identity of each target as the same time. On the latest MOT 2017 benchmark, we achieve state-of-the-art results.

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