Autonomous Bimanual Functional Regrasping of Novel Object Class Instances

D. Pavlichenko, Diego Rodriguez, Christian Lenz, Max Schwarz, Sven Behnke
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引用次数: 6

Abstract

In human-made scenarios, robots need to be able to fully operate objects in their surroundings, i.e., objects are required to be functionally grasped rather than only picked. This imposes very strict constraints on the object pose such that a direct grasp can be performed. Inspired by the anthropomorphic nature of humanoid robots, we propose an approach that first grasps an object with one hand, obtaining full control over its pose, and performs the functional grasp with the second hand subsequently. Thus, we develop a fully autonomous pipeline for dual-arm functional regrasping of novel familiar objects, i.e., objects never seen before that belong to a known object category, e.g., spray bottles. This process involves semantic segmentation, object pose estimation, non-rigid mesh registration, grasp sampling, handover pose generation and in-hand pose refinement. The latter is used to compensate for the unpredictable object movement during the first grasp. The approach is applied to a human-like upper body. To the best knowledge of the authors, this is the first system that exhibits autonomous bimanual functional regrasping capabilities. We demonstrate that our system yields reliable success rates and can be applied on-line to real-world tasks using only one off-the-shelf RGB-D sensor.
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新对象类实例的自主双手功能重抓取
在人造场景中,机器人需要能够完全操作周围的物体,也就是说,物体需要被功能性地抓住,而不仅仅是拾取。这对物体姿势施加了非常严格的约束,以便可以执行直接抓取。受仿人机器人拟人化特性的启发,我们提出了一种先用一只手抓住物体,获得对其姿态的完全控制,然后用第二只手进行功能性抓取的方法。因此,我们开发了一个完全自主的管道,用于双臂功能重新抓取新的熟悉物体,即以前从未见过的属于已知物体类别的物体,例如喷雾瓶。该过程包括语义分割、目标姿态估计、非刚性网格配准、抓取采样、切换姿态生成和手部姿态优化。后者用于补偿第一次抓取时不可预测的物体运动。这种方法被应用于类似人类的上半身。据作者所知,这是第一个展示自主双手功能抓取能力的系统。我们证明了我们的系统产生可靠的成功率,并且可以仅使用一个现成的RGB-D传感器在线应用于现实世界的任务。
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