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利用机器人手部柔顺性和环境约束进行边缘抓取

Exploiting Robot Hand Compliance and Environmental Constraints for Edge Grasps.

作者信息

Bimbo Joao, Turco Enrico, Ghazaei Ardakani Mahdi, Pozzi Maria, Salvietti Gionata, Bo Valerio, Malvezzi Monica, Prattichizzo Domenico

机构信息

Department of Advanced Robotics, Istituto Italiano di Tecnologia, Genoa, Italy.

Department of Information Engineering, University of Pisa, Pisa, Italy.

出版信息

Front Robot AI. 2019 Dec 19;6:135. doi: 10.3389/frobt.2019.00135. eCollection 2019.

Abstract

This paper presents a method to grasp objects that cannot be picked directly from a table, using a soft, underactuated hand. These grasps are achieved by dragging the object to the edge of a table, and grasping it from the protruding part, performing so-called grasps. This type of approach, which uses the environment to facilitate the grasp, is named Environmental Constraint Exploitation (ECE), and has been shown to improve the robustness of grasps while reducing the planning effort. The paper proposes two strategies, namely and , that are designed to deal with different objects. In the first strategy, the hand is positioned over the object and assumed to stick to it during the sliding until the edge, where the fingers wrap around the object and pick it up. In the second strategy, instead, the sliding motion is performed using pivoting, and thus the object is allowed to rotate with respect to the hand that drags it toward the edge. Then, as soon as the object reaches the desired position, the hand detaches from the object and moves to grasp the object from the side. In both strategies, the hand positioning for grasping the object is implemented using a recently proposed functional model for soft hands, the , whereas the sliding motion on the table is executed by using a hybrid force-velocity controller. We conducted 320 grasping trials with 16 different objects using a soft hand attached to a collaborative robot arm. Experiments showed that the Continuous Slide and Grasp is more suitable for small objects (e.g., a credit card), whereas the Pivot and Re-Grasp performs better with larger objects (e.g., a big book). The gathered data were used to train a classifier that selects the most suitable strategy to use, according to the object size and weight. Implementing ECE strategies with soft hands is a first step toward their use in real-world scenarios, where the environment should be seen more as a help than as a hindrance.

摘要

本文提出了一种使用柔软的欠驱动手抓取无法直接从桌面上拾取的物体的方法。这些抓取操作是通过将物体拖到桌子边缘,并从突出部分抓取来实现的,即所谓的边缘抓取。这种利用环境来辅助抓取的方法被称为环境约束利用(ECE),并且已经证明它可以在减少规划工作量的同时提高抓取的鲁棒性。本文提出了两种策略,即连续滑动抓取和枢转再抓取,旨在处理不同的物体。在第一种策略中,手位于物体上方,并假定在滑动过程中一直附着在物体上,直到到达边缘,此时手指环绕物体并将其拿起。相反,在第二种策略中,滑动运动是通过枢转来执行的,因此物体可以相对于将其拖向边缘的手旋转。然后,一旦物体到达所需位置,手就从物体上分离,并移动到侧面抓取物体。在这两种策略中,用于抓取物体的手的定位是使用最近提出的一种针对柔软手的功能模型实现的,而在桌子上的滑动运动则通过混合力-速度控制器来执行。我们使用连接到协作机器人手臂上的柔软手对16种不同物体进行了320次抓取试验。实验表明,连续滑动抓取更适合小物体(如信用卡),而枢转再抓取在处理较大物体(如大书)时表现更好。收集到的数据被用于训练一个分类器,该分类器根据物体的大小和重量选择最合适的策略来使用。用柔软手实现ECE策略是将其应用于现实场景的第一步,在现实场景中,环境应更多地被视为一种帮助而非障碍。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d938/7805883/45958044f228/frobt-06-00135-g0001.jpg

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