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Planning, Learning and Reasoning Framework for Robot Truck Unloading

Planning, Learning and Reasoning Framework for Robot Truck Unloading

来源:Arxiv_logoArxiv
英文摘要

We consider the task of autonomously unloading boxes from trucks using an industrial manipulator robot. There are multiple challenges that arise: (1) real-time motion planning for a complex robotic system carrying two articulated mechanisms, an arm and a scooper, (2) decision-making in terms of what action to execute next given imperfect information about boxes such as their masses, (3) accounting for the sequential nature of the problem where current actions affect future state of the boxes, and (4) real-time execution that interleaves high-level decision-making with lower level motion planning. In this work, we propose a planning, learning, and reasoning framework to tackle these challenges, and describe its components including motion planning, belief space planning for offline learning, online decision-making based on offline learning, and an execution module to combine decision-making with motion planning. We analyze the performance of the framework on real-world scenarios. In particular, motion planning and execution modules are evaluated in simulation and on a real robot, while offline learning and online decision-making are evaluated in simulated real-world scenarios.

Fahad Islam、Anirudh Vemula、Andrew Dornbush、Sung-Kyun Kim、Maxim Likhachev、Oren Salzman

自动化技术、自动化技术设备计算技术、计算机技术综合运输

Fahad Islam,Anirudh Vemula,Andrew Dornbush,Sung-Kyun Kim,Maxim Likhachev,Oren Salzman.Planning, Learning and Reasoning Framework for Robot Truck Unloading[EB/OL].(2019-10-21)[2025-08-18].https://arxiv.org/abs/1910.09453.点此复制

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