In this paper, we address the vision-based detection and tracking problems of multiple aerial vehicles using a single camera and Inertial Measurement Unit (IMU) as well as the corresponding perception consensus problem (i.e., uniqueness and identical IDs across all observing agents). We design several vision-based decentralized Bayesian multi-tracking filtering strategies to resolve the association between the incoming unsorted measurements obtained by a visual detector algorithm and the tracked agents. We compare their accuracy in different operating conditions as well as their scalability according to the number of agents in the team. This analysis provides useful insights about the most appropriate design choice for the given task. We further show that the proposed perception and inference pipeline which includes a Deep Neural Network (DNN) as visual target detector is lightweight and capable of concurrently running control and planning with Size, Weight, and Power (SWaP) constrained robots on-board. Experimental results show the effective tracking of multiple drones in various challenging scenarios such as heavy occlusions.
翻译:在本文中,我们用单一摄像头和惯性测量股(IMU)处理多飞行器的视觉探测和跟踪问题,以及相应的认知共识问题(即所有观测剂的独特性和相同的身份);我们设计了若干基于视觉的分散型巴伊西亚多轨过滤战略,以解决通过视觉检测算法和跟踪剂获得的未分解测量结果与跟踪剂之间的联系;我们比较了不同操作条件的准确性及其根据团队内代理人人数的可扩缩性;这一分析为特定任务最适当的设计选择提供了有益的见解。我们进一步表明,拟议的认知和推断管道包括深神经网络(DNN),作为视觉目标探测器,具有轻度,能够同时与大小、Wight和Power(SWaP)受约束的机器人同时进行控制和规划。实验结果显示,在各种具有挑战性的情景中,如严重隐蔽,对多个无人驾驶飞机的有效跟踪。