基于低成本桌面机器人的自适应未知物体重排

Chun-Yu Chai, Wen-Hsiao Peng, Shiao-Li Tsao
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引用次数: 4

摘要

对象重排规划研究通常考虑已知对象。一些基于学习的方法可以在单步交互后预测未知物体的运动,但需要手动生成中间目标来完成重排任务。在这项工作中,我们提出了一个未知对象重排的框架。我们的系统首先通过少量的识别动作对对象进行建模,并在任务执行过程中调整模型参数。我们基于一个低成本的桌面机器人(180美元以下)实现了所提出的框架,以展示使用物理引擎辅助动作预测的优势。实验结果表明,在运行我们的自适应学习程序后,机器人可以在桌面环境中使用平均5个离散的推动成功地排列新物体,并满足精确的3.5 cm平移和5°旋转标准。
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Adaptive Unknown Object Rearrangement Using Low-Cost Tabletop Robot
Studies on object rearrangement planning typically consider known objects. Some learning-based methods can predict the movement of an unknown object after single-step interaction, but require intermediate targets, which are generated manually, to achieve the rearrangement task. In this work, we propose a framework for unknown object rearrangement. Our system first models an object through a small-amount of identification actions and adjust the model parameters during task execution. We implement the proposed framework based on a low-cost tabletop robot (under 180 USD) to demonstrate the advantages of using a physics engine to assist action prediction. Experimental results reveal that after running our adaptive learning procedure, the robot can successfully arrange a novel object using an average of five discrete pushes on our tabletop environment and satisfy a precise 3.5 cm translation and 5° rotation criterion.
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