视频SAR中的多目标跟踪:基准和跟踪基线

IF 4.4
Haoxiang Chen;Wei Zhao;Rufei Zhang;Nannan Li;Dongjin Li
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引用次数: 0

摘要

在使用视频合成孔径雷达(video SAR)进行多目标跟踪的情况下,目标运动引起的多普勒频移导致的伪影很容易被误认为是由静态遮挡引起的阴影。此外,多普勒失配引起的目标外观变化可能导致关联失效,破坏弹道连续性。该领域的一个主要限制是缺乏用于标准化算法评估的公共基准数据集。为了解决上述问题,我们收集并标注了45个包含运动目标的视频SAR序列,并命名了视频SAR MOT基准(VSMB)。具体来说,为了减轻运动目标的拖尾和散焦的影响,我们引入了一种线特征增强机制,强调运动阴影的积极作用,减少静态遮挡引起的误报。此外,为了减轻目标外观变化的不利影响,我们提出了一种运动感知线索丢弃机制,该机制大大提高了视频SAR的跟踪鲁棒性。所提出的模型在VSMB上实现了最先进的性能,数据集和模型发布在https://github.com/softwarePupil/VSMB上
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple Object Tracking in Video SAR: A Benchmark and Tracking Baseline
In the context of multiobject tracking using video synthetic aperture radar (Video SAR), Doppler shifts induced by target motion result in artifacts that are easily mistaken for shadows caused by static occlusions. Moreover, appearance changes of the target caused by Doppler mismatch may lead to association failures and disrupt trajectory continuity. A major limitation in this field is the lack of public benchmark datasets for standardized algorithm evaluation. To address the above challenges, we collected and annotated 45 video SAR sequences containing moving targets, and named the video SAR MOT benchmark (VSMB). Specifically, to mitigate the effects of trailing and defocusing in moving targets, we introduce a line feature enhancement mechanism that emphasizes the positive role of motion shadows and reduces false alarms induced by static occlusions. In addition, to mitigate the adverse effects of target appearance variations, we propose a motion-aware clue discarding mechanism that substantially improves tracking robustness in video SAR. The proposed model achieves state-of-the-art performance on the VSMB, and the dataset and model are released at https://github.com/softwarePupil/VSMB
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