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首页> 外文期刊>IEEE Transactions on Systems, Man, and Cybernetics >Real-Time Pose Imitation by Mid-Size Humanoid Robot With Servo-Cradle-Head RGB-D Vision System
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Real-Time Pose Imitation by Mid-Size Humanoid Robot With Servo-Cradle-Head RGB-D Vision System

机译:具有伺服摇头RGB-D视觉系统的中型人形机器人实时模仿姿势

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摘要

To begin with, the target human (TH) in the face of a mid-size humanoid robot performs 3-D motions captured by the servo-cradle-head RGB-D vision system (SCH-RGB-D-VS) on its head. During imitation processing, the SCH-RGB-D-VS can maintain a suitable field of view in the pitching and rolling directions to acquire the correct images of the TH’s motion. Its necessity is first confirmed by the experimental result. Based on the 3-D coordinates of the head and two feet, 11 stable motions of the lower body (LB) are classified by the proposed improved support vector machine. Two pairs of hands and elbows for upper body (UB) imitation are approximated by eight pretrained multilayer neural network models to enhance one-to-one mapping, reduce the modeling complexity of inverse kinematics, and imitate complex motion. Finally, three categories of experiments by integrated motion of UB and LB confirm the effectiveness and robustness of the proposed method.
机译:首先,目标人(TH)面对中型人形机器人,执行其头部的伺服摇篮式RGB-D视觉系统(SCH-RGB-D-VS)捕获的3-D运动。在模仿过程中,SCH-RGB-D-VS可以在俯仰和滚动方向上保持合适的视野,以获取TH运动的正确图像。实验结果首先证实了其必要性。基于头部和两只脚的3-D坐标,通过提出的改进的支持向量机对下半身(LB)的11种稳定运动进行分类。通过八个预训练的多层神经网络模型来近似两对上半身(UB)的手和肘,以增强一对一映射,降低逆运动学的建模复杂性,并模拟复杂的运动。最后,通过UB和LB的集成运动进行的三类实验证实了该方法的有效性和鲁棒性。

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