This paper introduces DextAIRity, an approach to manipulate deformable objects using active airflow. In contrast to conventional contact-based quasi-static manipulations, DextAIRity allows the system to apply dense forces on out-of-contact surfaces, expands the system's reach range, and provides safe high-speed interactions. These properties are particularly advantageous when manipulating under-actuated deformable objects with large surface areas or volumes. We demonstrate the effectiveness of DextAIRity through two challenging deformable object manipulation tasks: cloth unfolding and bag opening. We present a self-supervised learning framework that learns to effectively perform a target task through a sequence of grasping or air-based blowing actions. By using a closed-loop formulation for blowing, the system continuously adjusts its blowing direction based on visual feedback in a way that is robust to the highly stochastic dynamics. We deploy our algorithm on a real-world three-arm system and present evidence suggesting that DextAIRity can improve system efficiency for challenging deformable manipulation tasks, such as cloth unfolding, and enable new applications that are impractical to solve with quasi-static contact-based manipulations (e.g., bag opening). Video is available at https://youtu.be/_B0TpAa5tVo
翻译:本文介绍DextAIRity, 这是一种利用活跃的空气流来操纵变形物体的方法。 DextAIRity 与常规的基于接触的准静态操纵相比, DextAIRity 允许系统在接触外表面应用密集力量,扩大系统的接触范围,提供安全高速互动。 这些特性在以大表面积或体积来操纵有较大表面或体积的低活变形物体时特别有利。 我们通过两个具有挑战性的变形物体操作任务来显示DextAIRity的效力:布布布的展开和包的打开。 我们提出了一个自我监督的学习框架,通过抓取或空基的吹动行动序列来学习如何有效执行目标任务。 通过使用闭环式设计来吹泡系统,系统在视觉反馈的基础上不断调整其发光方向。 我们把我们的算法放在一个真实世界的三臂系统上,并提供证据表明DextAIRity能够提高系统的效率,以挑战变形的操纵任务,例如布的展开,以及使新的应用程序能够以不切实际的方式在准的图像上进行。