Trajectory Planning of Upper Limb Rehabilitation Robot Based on Human Pose Estimation

T. Tao, Xingyu Yang, Jiayu Xu, Wei Wang, Sicong Zhang, Ming Li, Guanghua Xu
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引用次数: 10

Abstract

Stroke has become the second leading cause of death in the world, and timely rehabilitation can effectively help patients recover. At present, with the shortage of rehabilitation doctors, using rehabilitation robots to help patients recover has become a more feasible solution. In order to plan a bionic motion trajectory of an upper limb rehabilitation robot more conveniently, a teaching trajectory planning method was proposed based on human pose estimation in this paper. The teaching trajectories were collected by Kinect's depth camera and human bone joints were tracked using deep neural networks OpenPose. The processed trajectories were verified with modeling simulation and robot motion. The planar trajectories were evaluated using the minimum Jerk principle on bio-imitability, the position determination coefficient is more 0.99, the speed determination coefficient is more than 0.94, and the acceleration determination coefficient is more than 0.88. In the case of block, the recognition success rate has increased by more than 73.4% compared with Kinect's bone binding OpenPose algorithm for human bone joint recognition. The bioimitability of the trajectories planned by this method can conveniently and quickly meet the needs of rehabilitation doctors in hospitals to plan the rehabilitation robot trajectory.
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基于人体姿态估计的上肢康复机器人轨迹规划
中风已成为全球第二大死亡原因,及时进行康复治疗可以有效帮助患者康复。目前,在康复医生短缺的情况下,使用康复机器人帮助患者康复已成为一种更可行的解决方案。为了更方便地规划上肢康复机器人的仿生运动轨迹,本文提出了一种基于人体姿态估计的教学轨迹规划方法。教学轨迹由Kinect的深度摄像头收集,并使用深度神经网络OpenPose跟踪人体骨骼关节。通过建模仿真和机器人运动验证了处理后的轨迹。采用生物仿性最小震动原理对平面轨迹进行评价,位置决定系数大于0.99,速度决定系数大于0.94,加速度决定系数大于0.88。在块的情况下,与Kinect的骨绑定OpenPose算法相比,识别成功率提高了73.4%以上。该方法所规划的轨迹具有生物仿性,可以方便、快速地满足医院康复医生规划康复机器人轨迹的需求。
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