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Learning sequence-to-sequence affinity metric for near-online multi-object tracking

机译:学习近旁边的亲和度量的近代多对象跟踪

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摘要

In this paper, we propose a sequence-to-sequence affinity metric for the data association of near-online multi-object tracking. The proposed metric learns the affinity between track sequence consisting of the already associated detections and hypothesis sequence consisting of detections in the near future. With the potential hypothesis sequences, we leverage the idea that if a track sequence has a high affinity for a hypothesis sequence, and the hypothesis sequence also shares a close affinity for a current detection, then the affinity between the track sequence and the detection is high. By using the short hypothesis sequence as a "bridge", the proposed sequence-to-sequence affinity metric enhances the conventional track sequence to detection affinity metric and improves its robustness to object occlusion and missing. Besides, in order to eliminate the negative effects of false alarms, we propose a false alarm model using both appearance and scale features of detection. The robustness of the proposed affinity metric allows us to use a simple greedy data association algorithm. Experimental results on the challenging MOT16 and MOT17 benchmarks demonstrate the effectiveness of our method.
机译:在本文中,我们提出了近联盟多对象跟踪数据关联的序列与序列亲和度。所提出的度量标准学习轨道序列之间的亲和力,包括在不久的将来组成的已经相关的检测和假设序列。利用潜在的假设序列,我们利用了这种想法,如果轨道序列对假设序列具有高亲和力,并且假设序列也分享了对电流检测的密切关联,则轨道序列与检测之间的亲和力很高。通过使用短假设序列作为“桥梁”,所提出的序列到序列亲和度量可增强传统的轨道序列,以检测亲和度量,并将其鲁棒性提高到对象遮挡和缺失。此外,为了消除误报的负面影响,我们使用检测的外观和尺度特征提出了一个错误的报警模型。建议亲和度量的稳健性允许我们使用简单的贪婪数据关联算法。具有挑战性的MOT16和MOT17基准测试的实验结果证明了我们方法的有效性。

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