基于骨骼识别的家庭康复辅助类人机器人运动生成与用户情感评估

Tamon Miyake, Yushi Wang, Gang Yan, S. Sugano
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引用次数: 1

摘要

护士的短缺和老年人口的增加对护理机器人的需求是安全、智能地完成护理任务。本研究提出了一种基于骨骼识别的人形机器人运动生成方法,用于双7自由度手臂操作人体运动范围训练。基于mediapipe的骨骼识别,安装人形机器人,即使没有摄像头看到整个身体,也能识别人体的姿势。控制七自由度手臂以达到检测到的人体右肩的三维坐标。在实验中,机器人站在三种位置:实验参与者可以完全看到机器人的位置,参与者可以部分看到机器人的位置,参与者看不到机器人的位置。在每个站立点,机器人用一只手臂到达人的肩膀,有3种模式的路径点,另一只手支撑人的手。系统成功地生成了上述条件下的运动,除了人背对着机器人。结果表明,当参与者的背影只能被部分捕捉到时,很难识别人体部位。在运动生成方面,机器人需要站在人的前面或旁边,以便伸手进行运动范围训练。此外,我们假设当参与者没有完全看向机器人时(机器人站在人类侧面的情况),上路点的接受度相对较高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Skeleton recognition-based motion generation and user emotion evaluation with in-home rehabilitation assistive humanoid robot
The shortage of nurses and the increasing elderly population demand robots in nursing that can carry out care tasks safely and intelligently. In this study, the method of skeleton recognition-based motion generation of the humanoid robot for the human range-of-motion training with dual 7-DOF arm manipulation is developed. Mediapipe-based skeleton recognition is installed with humanoid robot to recognize the human pose even though the whole of body is not seen by a camera. The 7-DOF arm was controlled to reach the detected 3D coordinates of the human right shoulders. In the experiment, the robot stood at three positions: where experimental partici-pants could see the robot fully, where the participants could see the robot partially, and where the participants could not see the robot. In each standing point, the robot uses one arm to reach to the human's shoulder with 3 patterns of waypoints while the other hand supports the human's hand. The system successfully generated the motion for the mentioned conditions except when human had his/her back towards the robot. Results show that it was difficult to recognize human body parts when the back view of the participants could only be partially captured. In terms of motion generation, robot needs to stand in front or sideway of people for reaching hand to conduct range-of-motion training. In addition, we assume that upper waypoint has a relatively high acceptance when the participants did not look at the robot fully (the condition where robot stands in sideway of the human).
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