Learning the Dynamics of Compliant Tool-Environment Interaction for Visuo-Tactile Contact Servoing

Mark Van der Merwe, D. Berenson, Nima Fazeli
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引用次数: 7

Abstract

Many manipulation tasks require the robot to control the contact between a grasped compliant tool and the environment, e.g. scraping a frying pan with a spatula. However, modeling tool-environment interaction is difficult, especially when the tool is compliant, and the robot cannot be expected to have the full geometry and physical properties (e.g., mass, stiffness, and friction) of all the tools it must use. We propose a framework that learns to predict the effects of a robot's actions on the contact between the tool and the environment given visuo-tactile perception. Key to our framework is a novel contact feature representation that consists of a binary contact value, the line of contact, and an end-effector wrench. We propose a method to learn the dynamics of these contact features from real world data that does not require predicting the geometry of the compliant tool. We then propose a controller that uses this dynamics model for visuo-tactile contact servoing and show that it is effective at performing scraping tasks with a spatula, even in scenarios where precise contact needs to be made to avoid obstacles.
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视觉-触觉接触伺服系统柔顺工具-环境交互动力学研究
许多操作任务要求机器人控制抓取的顺应工具与环境之间的接触,例如用锅铲刮煎锅。然而,建模工具-环境的相互作用是困难的,特别是当工具是柔性的,并且不能期望机器人具有它必须使用的所有工具的完整几何和物理特性(例如,质量,刚度和摩擦)。我们提出了一个框架,该框架可以学习预测机器人的动作对工具与环境之间接触的影响,并给予视觉触觉感知。我们的框架的关键是一种新的接触特征表示,它由二进制接触值、接触线和末端执行器扳手组成。我们提出了一种方法来学习这些接触特征的动态从现实世界的数据,不需要预测的几何形状的顺应工具。然后,我们提出了一个使用该动态模型进行视觉触觉接触伺服的控制器,并表明它在使用刮刀执行刮削任务时是有效的,即使在需要精确接触以避开障碍物的情况下也是如此。
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