Biomimetic Grasp Control of Robotic Hands Using Deep Learning

Yazan M. Dweiri, Mohammad M. AlAjlouni, Jawdat R. Ayoub, Alaa Y. Al-Zeer, Ali H. Hejazi
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引用次数: 0

Abstract

Gripping force modulation based on pressure feedback is an essential element for intuitive and natural-like control of powered limb prostheses. This paper aims to mimic human hand-gripping control in robotic arms by processing dynamic pressure maps with state-of-the-art artificial intelligence algorithms. A pressure-sensing glove was built with integrated data acquisition to learn human grip behavior when holding various objects, and then transfer the observed control pattern to control a robotic arm. The pressure readings are processed using a recurrent convolutional neural network and were able to predict the biological gripping termination with an accuracy of 84.5% for a single type of object and 77% for mixed object types. The proposed control system has proven to be a viable approach for biomimetic handling control for an intelligent robotic arm with pressure feedback.
基于深度学习的机械手仿生抓取控制
基于压力反馈的抓握力调节是实现动力假肢直观、自然控制的重要组成部分。本文旨在利用最先进的人工智能算法处理动态压力图,模拟机器人手臂的人手抓取控制。设计了一种集成数据采集的压力传感手套,用于学习人体在握住各种物体时的握持行为,然后将观察到的控制模式传递到机械臂的控制上。压力读数使用循环卷积神经网络进行处理,能够预测生物抓取终止,对于单一类型的物体,准确率为84.5%,对于混合物体类型,准确率为77%。该控制系统已被证明是一种具有压力反馈的智能机械臂仿生操纵控制的可行方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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