论文标题

具有代理共享网络的基于多无人机的单一对象跟踪

Multi-Drone based Single Object Tracking with Agent Sharing Network

论文作者

Zhu, Pengfei, Zheng, Jiayu, Du, Dawei, Wen, Longyin, Sun, Yiming, Hu, Qinghua

论文摘要

与静态相机或地面上移动传感器相比,配备摄像头的无人机可以从更广阔的视图中动态跟踪空气中的目标。但是,由于几个因素(例如外观变化和严重的闭塞),使用单个无人机准确跟踪目标仍然具有挑战性。在本文中,我们收集了一个新的多无形单一对象跟踪(MDOT)数据集,该数据集由92组视频剪辑组成,由两个无人机和63组视频剪辑采用的113,918个高分辨率帧,带有145,875的高分辨率帧,由三个三个无人机拍摄。此外,两个评估指标是专门为多无形单一对象跟踪的专门设计的,即自动融合得分(AFS)和理想的融合得分(IFS)。此外,代理共享网络(ASNET)是通过从多个无人机中的目标共享和观察性融合提出的,与单人无人机跟踪相比,目标可以显着提高跟踪准确性。关于MDOT的广泛实验表明,我们的ASNET明显胜过最近的最新跟踪器。

Drone equipped with cameras can dynamically track the target in the air from a broader view compared with static cameras or moving sensors over the ground. However, it is still challenging to accurately track the target using a single drone due to several factors such as appearance variations and severe occlusions. In this paper, we collect a new Multi-Drone single Object Tracking (MDOT) dataset that consists of 92 groups of video clips with 113,918 high resolution frames taken by two drones and 63 groups of video clips with 145,875 high resolution frames taken by three drones. Besides, two evaluation metrics are specially designed for multi-drone single object tracking, i.e. automatic fusion score (AFS) and ideal fusion score (IFS). Moreover, an agent sharing network (ASNet) is proposed by self-supervised template sharing and view-aware fusion of the target from multiple drones, which can improve the tracking accuracy significantly compared with single drone tracking. Extensive experiments on MDOT show that our ASNet significantly outperforms recent state-of-the-art trackers.

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