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On the detection-to-track association for online multi-object tracking

机译:关于在线多对象跟踪的检测到跟踪关联

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摘要

Driven by recent advances in object detection with deep neural networks, the tracking-by-detection paradigm has gained increasing prevalence in the research community of multi-object tracking (MOT). It has long been known that appearance information plays an essential role in the detection-to-track association, which lies at the core of the tracking-by-detection paradigm. While most existing works consider the appearance distances between the detections and the tracks, they ignore the statistical information implied by the historical appearance distance records in the tracks, which can be particularly useful when a detection has similar distances with two or more tracks. In this work, we propose a hybrid track association (HTA) algorithm that models the historical appearance distances of a track with an incremental Gaussian mixture model (IGMM) and incorporates the derived statistical information into the calculation of the detection-to-track association cost. Experimental results on three MOT benchmarks confirm that HTA effectively im proves the target identification performance with a small compromise to the tracking speed. Additionally, compared to many state-of-the-art trackers, the DeepSORT tracker equipped with HTA achieves better or comparable performance in terms of the balance of tracking quality and speed.(c) 2021 Elsevier B.V. All rights reserved.
机译:最近对物体检测的进步驱动,具有深度神经网络,逐个检测范式在多对象跟踪研究界中增加了普遍性(MOT)。已经知道外观信息在检测到轨道关联中起重要作用,其位于跟踪逐个范例的核心。虽然大多数现有作品考虑检测和轨道之间的外观距离,但它们忽略轨道中暗示暗示的统计信息,当检测具有两个或更多个轨道时,这可能特别有用。在这项工作中,我们提出了一种混合轨道关联(HTA)算法,其用增量高斯混合模型(IGMM)模拟轨道的历史外观距离,并将导出的统计信息包含到检测到跟踪关联成本的计算中。在三个MOT基准上的实验结果证实,HTA有效地证明了目标识别性能,以小额妥协到跟踪速度。此外,与许多最先进的跟踪器相比,配备HTA的DeeDsort跟踪器在跟踪质量和速度的平衡方面实现了更好或相当的性能。(c)2021 Elsevier B.v.保留所有权利。

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