Research on Multimodal Control Method for Prosthetic Hands Based on Visuo-Tactile and Arm Motion Measurement.

IF 3.4 3区 医学 Q1 ENGINEERING, MULTIDISCIPLINARY
Jianwei Cui, Bingyan Yan
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Abstract

The realization of hand function reengineering using a manipulator is a research hotspot in the field of robotics. In this paper, we propose a multimodal perception and control method for a robotic hand to assist the disabled. The movement of the human hand can be divided into two parts: the coordination of the posture of the fingers, and the coordination of the timing of grasping and releasing objects. Therefore, we first used a pinhole camera to construct a visual device suitable for finger mounting, and preclassified the shape of the object based on YOLOv8; then, a filtering process using multi-frame synthesized point cloud data from miniature 2D Lidar, and DBSCAN algorithm clustering objects and the DTW algorithm, was proposed to further identify the cross-sectional shape and size of the grasped part of the object and realize control of the robot's grasping gesture; finally, a multimodal perception and control method for prosthetic hands was proposed. To control the grasping attitude, a fusion algorithm based on information of upper limb motion state, hand position, and lesser toe haptics was proposed to realize control of the robotic grasping process with a human in the ring. The device designed in this paper does not contact the human skin, does not produce discomfort, and the completion rate of the grasping process experiment reached 91.63%, which indicates that the proposed control method has feasibility and applicability.

基于视触觉和手臂运动测量的假手多模态控制方法研究。
利用机械手实现手的功能再造是机器人领域的一个研究热点。在本文中,我们提出了一种多模态感知和控制方法的机械手,以帮助残疾人。人的手的运动可以分为两个部分:手指姿势的协调,以及抓取和释放物体的时机的协调。因此,我们首先使用针孔相机构建适合手指安装的视觉装置,并基于YOLOv8对物体形状进行预分类;然后,利用微型二维激光雷达合成的多帧点云数据进行滤波处理,结合聚类目标的DBSCAN算法和DTW算法,进一步识别物体被抓取部分的横截面形状和大小,实现机器人抓取姿态的控制;最后,提出了一种假手多模态感知与控制方法。为了控制机器人的抓取姿态,提出了一种基于上肢运动状态、手部位置和小脚趾触觉信息的融合算法,实现了机器人在环上抓取过程的控制。本文设计的装置不接触人体皮肤,不产生不适感,抓取过程实验完成率达到91.63%,表明所提出的控制方法具有可行性和适用性。
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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来源期刊
Biomimetics
Biomimetics Biochemistry, Genetics and Molecular Biology-Biotechnology
CiteScore
3.50
自引率
11.10%
发文量
189
审稿时长
11 weeks
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