Unmanned Aerial Vehicle (UAV) offers lots of applications in both commerce and recreation. With this, monitoring the operation status of UAVs is crucially important. In this work, we consider the task of tracking UAVs, providing rich information such as location and trajectory. To facilitate research in this topic, we propose a dataset, Anti-UAV, with more than 300 video pairs containing over 580k manually annotated bounding boxes. The releasing of such a large-scale dataset could be a useful initial step in research of tracking UAVs. Furthermore, the advancement of addressing research challenges in Anti-UAV can help the design of anti-UAV systems, leading to better surveillance of UAVs. Besides, a novel approach named dual-flow semantic consistency (DFSC) is proposed for UAV tracking. Modulated by the semantic flow across video sequences, the tracker learns more robust class-level semantic information and obtains more discriminative instance-level features. Experimental results demonstrate that Anti-UAV is very challenging, and the proposed method can effectively improve the tracker's performance. The Anti-UAV benchmark and the code of the proposed approach will be publicly available at https://github.com/ucas-vg/Anti-UAV.
翻译:无人驾驶航空飞行器(UAV)提供大量商业和娱乐应用,因此,监测无人驾驶航空器的运行状况至关重要。在这项工作中,我们考虑跟踪无人驾驶航空器的任务,提供位置和轨迹等丰富信息;为便利这一专题的研究,我们提议建立一个数据集,即反无人驾驶航空器(UAV),配有300多个视频配对,包含580公里以上人工手动附加说明的捆绑框。释放这样一个大型数据集可能是跟踪无人驾驶航空器研究的一个有益的初步步骤。此外,在反无人驾驶航空器中应对研究挑战的进展有助于设计反无人驾驶航空器系统,导致更好地监视无人驾驶航空器。此外,为UAV跟踪提议了一个名为双流语义一致性的新办法。由视频序列的语义流排列,跟踪者学习更强有力的等级级语义信息,并获得更具有歧视性的实例级特征。实验结果显示,反无人驾驶航空器系统应对挑战性很强,拟议方法可以有效地改进可公开使用的轨道/AVAVV/A标准。