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Supervised Autonomy for Exploration and Mobile Manipulation in Rough Terrain with a Centaur-Like Robot

Max Schwarz, Marius Beul, David Droeschel, Sebastian Schüller, Arul Selvam Periyasamy, Christian Lenz, Michael Schreiber, Sven Behnke

发表年份
2016
引用次数
30
访问权限
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摘要

Planetary exploration scenarios illustrate the need for autonomous robots that are capable to operate in unknown environments without direct human interaction. At the DARPA Robotics Challenge, we demonstrated that our Centaur-like mobile manipulation robot Momaro can solve complex tasks when teleoperated. Motivated by the DLR SpaceBot Cup 2015, where robots should explore a Mars-like environment, find and transport objects, take a soil sample, and perform assembly tasks, we developed autonomous capabilities for Momaro. Our robot perceives and maps previously unknown, uneven terrain using a 3D laser scanner. Based on the generated height map, we assess drivability, plan navigation paths, and execute them using the omnidirectional drive. Using its four legs, the robot adapts to the slope of the terrain. Momaro perceives objects with cameras, estimates their pose, and manipulates them with its two arms autonomously. For specifying missions, monitoring mission progress, on-the-fly reconfiguration, and teleoperation, we developed a ground station with suitable operator interfaces. To handle network communication interruptions and latencies between robot and ground station, we implemented a robust network layer for the ROS middleware. With the developed system, our team NimbRo Explorer solved all tasks of the DLR SpaceBot Camp 2015. We also discuss the lessons learned from this demonstration.

关键词

TeleoperationComputer scienceRobotTerrainArtificial intelligenceMobile robotRoboticsComputer visionReal-time computingSimulation

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