Deep Learning–based Reassembling of an Aerial & Legged Marsupial Robotic System–of–Systems

Prateek Arora, Tolga Karakurt, Eleni S. Avlonitis, S. Carlson, Brandon Moore, David Feil-Seifer, C. Papachristos
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Abstract

In this work we address the System-of-Systems reassembling operation of a marsupial team comprising a hybrid Unmanned Aerial Vehicle and a Legged Locomotion robot, relying solely on vision-based systems and assisted by Deep Learning. The target application domain is that of large-scale field surveying operations under the presence of wireless communication disruptions. While most real-world field deployments of multi-robot systems assume some degree of wireless communication to coordinate key tasks such as multi-agent rendezvous, a desirable feature against unrecoverable communication failures or radio degradation due to jamming cyber-attacks is the ability for autonomous systems to robustly execute their mission with onboard perception. This is especially true for marsupial air / ground teams, wherein landing onboard the ground robot is required. We propose a pipeline that relies on Deep Neural Network-based Vehicle-to-Vehicle detection based on aerial views acquired by flying at typical altitudes for Micro Aerial Vehicle-based real-world surveying operations, such as near the border of the 400ft Above Ground Level window. We present the minimal computing and sensing suite that supports its execution onboard a fully autonomous micro-Tiltrotor aircraft which detects, approaches, and lands onboard a Boston Dynamics Spot legged robot. We present extensive experimental studies that validate this marsupial aerial / ground robot’s capacity to safely reassemble while in the airborne scouting phase without the need for wireless communication.
基于深度学习的空中有足有袋类机器人系统的重组
在这项工作中,我们解决了由混合无人机和有腿运动机器人组成的有袋类动物团队的系统重组操作,仅依靠基于视觉的系统并辅以深度学习。目标应用领域是存在无线通信中断的大规模野外测量作业。虽然在现实世界中,大多数多机器人系统的现场部署都假设有一定程度的无线通信来协调关键任务,如多智能体交会,但由于干扰网络攻击导致的不可恢复的通信故障或无线电退化的理想特性是自主系统能够在机载感知的情况下可靠地执行任务。对于有袋动物的空中/地面团队来说尤其如此,其中需要在地面机器人上着陆。我们提出了一种管道,该管道依赖于基于深度神经网络的车对车检测,该检测基于在典型高度飞行获得的鸟瞰图,用于基于微型飞行器的真实世界测量操作,例如在地面以上400英尺窗口的边界附近。我们展示了最小的计算和传感套件,支持其在完全自主的微型倾转旋翼飞机上执行,该飞机可以探测,接近并降落在波士顿动力公司的Spot腿式机器人上。我们提出了广泛的实验研究,以验证这种有袋类空中/地面机器人在空中侦察阶段无需无线通信即可安全重组的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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