基于软爪的传感器反馈自动抓取系统

Peichen Wu, Nanlin. Lin, Yifan Duan, Ting Lei, Lei Chai, Xiaoping Chen
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引用次数: 4

摘要

在本文中,我们提出了一个自动机器人抓取系统,该系统能够牢固而精细地抓取各种大小和形状的物体。抓取对象的两个主要组成部分是抓取选择和抓取执行。我们的提议的关键新颖之处在于我们定义了三个抓取原语,它们能够处理不同的对象。在抓取选择过程中,算法需要为每个抓取位置确定一个更好的抓取原语。该阶段不依赖于精确的对象模型,只依赖于对象的局部长度和宽度信息。对于不同的抓取原语,会触发不同的传感器。我们利用决策树的方法建立一个规则集,指导把握执行。训练过程中需要吸盘的压力值、触觉信息和驱动电机角度。我们总共捕获了3000多个数据组和标签,用交叉验证方法训练规则集。决策树的真阳性率为92.74%,真阴性率为97.84%。我们的研究结果也表明,夹持器可以很好地抓住不同直径的纸杯而不会压碎它们。最后,我们展示了系统自动抓取各种物体的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Automatic Grasp System with Sensor Feedback Based on Soft Gripper
In this paper, we present a automatic robotic grasp system that is capable of grasping objects with a wide range of sizes and shapes firmly and delicately. The two main components of grasping object are grasp selection and grasp execution. The key novel feature of our proposal is that we define three grasp primitives which are able to handle diverse objects. In grasp selection process, the algorithm needs to determine a better grasp primitive for each grasp position. This phase does not rely on precise object model but just on the local length and width information of object. For different grasp primitives, there are different sensors triggered. We utilize decision-making tree method to build a rules set which guides grasp execution. The pressure value of suction cups, tactile information and the drive motor angle are needed in training process. We capture over 3000 data groups and labels in total to train the rules set with cross validation method. For decision-making tree, the true positive rate and true negative rate are 92.74% and 97.84% respectively. Our results also show that the gripper can grasp paper cups of diverse diameters delicately without crushing them. Finally, we display the ability of our system by grasping diverse objects automatically.
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