Graph Feature Representation for Shadow-Assisted Moving Target Tracking in Video SAR

Mingjie Su;Peishuang Ni;Hao Pei;Xiuli Kou;Gang Xu
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Abstract

Recently, video synthetic aperture radar (video SAR) has drawn widespread attention due to its capability to monitor moving targets continuously. Tracking the moving targets in video SAR using the shadow information has been proven as a more effective method. However, the existing tracking methods process each target independently and ignore the interframe interactions. To deal with this issue and improve the tracking performance, we propose a graph feature representation algorithm for video SAR multitarget tracking (MTT) using the global topological information. Specifically, a directed graph is built for each detected shadow based on the neighbor spatial relations, where each node is the semantic features of the corresponding shadow and each edge is the relative position features with neighboring shadows. Subsequently, the detected shadows are associated with the tracking shadows according to the similarity of their graphs to achieve moving target tracking. Experimental results on the video SAR dataset validate that compared with the state-of-the-art (SOTA) tracking algorithms, our algorithm has higher tracking accuracy and lower identity (ID) switching rate.
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视频SAR中阴影辅助运动目标跟踪的图形特征表示
近年来,视频合成孔径雷达(video SAR)因其对运动目标的连续监测能力而受到广泛关注。在视频SAR中,利用阴影信息跟踪运动目标是一种较为有效的方法。然而,现有的跟踪方法对每个目标进行独立处理,忽略了帧间的相互作用。为了解决这一问题并提高跟踪性能,我们提出了一种基于全局拓扑信息的视频SAR多目标跟踪(MTT)图特征表示算法。具体来说,基于相邻空间关系为每个检测到的阴影构建一个有向图,其中每个节点是对应阴影的语义特征,每个边是与相邻阴影的相对位置特征。随后,将检测到的阴影根据图的相似度与跟踪阴影关联,实现对运动目标的跟踪。在视频SAR数据集上的实验结果表明,与最先进的(SOTA)跟踪算法相比,我们的算法具有更高的跟踪精度和更低的身份切换率。
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