ToolFlowNet: Robotic Manipulation with Tools via Predicting Tool Flow from Point Clouds

Daniel Seita, Yufei Wang, Sarthak J. Shetty, Edward Li, Zackory M. Erickson, David Held
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引用次数: 15

Abstract

Point clouds are a widely available and canonical data modality which convey the 3D geometry of a scene. Despite significant progress in classification and segmentation from point clouds, policy learning from such a modality remains challenging, and most prior works in imitation learning focus on learning policies from images or state information. In this paper, we propose a novel framework for learning policies from point clouds for robotic manipulation with tools. We use a novel neural network, ToolFlowNet, which predicts dense per-point flow on the tool that the robot controls, and then uses the flow to derive the transformation that the robot should execute. We apply this framework to imitation learning of challenging deformable object manipulation tasks with continuous movement of tools, including scooping and pouring, and demonstrate significantly improved performance over baselines which do not use flow. We perform 50 physical scooping experiments with ToolFlowNet and attain 82% scooping success. See https://tinyurl.com/toolflownet for supplementary material.
ToolFlowNet:通过从点云预测工具流的工具机器人操作
点云是一种广泛使用和规范的数据模式,它传达了场景的三维几何形状。尽管在点云的分类和分割方面取得了重大进展,但从这种模式中学习策略仍然具有挑战性,大多数模仿学习的先前工作都集中在从图像或状态信息中学习策略。在本文中,我们提出了一个从点云学习策略的新框架,用于机器人工具操作。我们使用了一种新颖的神经网络,ToolFlowNet,它预测机器人控制的工具上密集的逐点流,然后使用这些流来推导机器人应该执行的转换。我们将该框架应用于具有挑战性的可变形对象操作任务的模仿学习,包括工具的连续运动,包括舀和倒,并在不使用流的基线上证明了显着提高的性能。我们使用ToolFlowNet进行了50次物理挖取实验,成功率达到82%。参见https://tinyurl.com/toolflownet获取补充资料。
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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