At present, the main research direction of multi-object tracking framework is tracking by detection. Although the detection-based tracking framework can achieve good results, it is very dependent on the performance of the detector. The tracking results will be affected to a certain extent when the detector has the behaviors of omission and error detection. Therefore, in order to solve the problem of missing detection, we designs a compensation tracker based on motion compensation and objects selection. Besides the tracker can be embedded into other non-end-to-end tracking frameworks. Experiments show that after using the compensation tracker designed in this paper, evaluation indicators have improved in varying degrees on MOT Challenge datasets. With limit cost, the compensation tracker haves reached 66% MOTA and 67% IDF1 in the 2020 datasets of dense scenarios. This shows that the proposed method can effectively improve the tracking performance of the model.
翻译:目前,多物体跟踪框架的主要研究方向是检测跟踪。虽然检测跟踪框架可以取得良好结果,但非常取决于探测器的性能。当探测器有失职和误差行为时,跟踪结果将受到一定程度的影响。因此,为解决失踪检测问题,我们根据运动补偿和物体选择设计了补偿跟踪器。除了跟踪器可以嵌入其他非端到端跟踪框架外,实验显示,在使用本文件设计的补偿跟踪器后,MOT挑战数据集的评价指标在不同程度上有所改进。在限制成本的情况下,补偿跟踪器在2020年密集情景数据集中达到了66% MATA和67% UNF1。这表明,拟议的方法可以有效地改进模型的跟踪性能。