基于气囊人机交互力检测和多源信息融合的人体运动意图识别方法

Yong Zhang, Pingang Han, Hao Liu, Jiali Chen
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引用次数: 0

摘要

动力辅助外骨骼机器人能够为操作者提供舒适、自然的运动辅助,这就需要根据操作者的意图设计完善的人机协同运动控制算法。肌表电作为一种生物电信号,具有运动控制实时性强的优点,但由于其模糊性和偶合性较强,准确性和可靠性较低。因此,交互力信号作为人体运动意图检测的控制信号源仍然是最可靠、最稳定的方法。本研究提出了一种基于气囊的人机交互力信号检测方法,该方法结合生物电信号识别人体运动意图,充分利用两种不同的控制信号源。设计了气囊交互力检测装置,利用压力传感器实时监测气囊内部压力,并通过预标定的人机交互力模型将信号转换为交互力。将交互力与表面肌电信号、关节角位移和气动肌肉内部压力进行融合,然后基于逻辑回归算法得到操作者的运动意图。实验结果表明,该方法具有响应快、识别准确、稳定性好等特点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human motion intention recognition method based on gasbag human-machine interactive force detection and multi-source information fusion
A power-assisted exoskeleton robot can provide its operator a comfortable and natural motion assistance, which requires a perfect human-machine cooperative motion control algorithm according to the operator's intentions. As a bioelectrical signal, surface electromyography (sEMG) has the advantage of real-time for motion control, but its accuracy and reliability are still low due to strong ambiguity and coupling. So interactive force signal is still the most reliable and stable method as the control signal source for human motion intention detection. In this study, a gasbag-based human-machine interaction force signal detection method is proposed, which is combined with bioelectrical signals to identify human motion intentions and take full advantage of the two different control signal sources. A gasbag interactive force detection device is designed to monitor the internal pressure of the gasbag in real time with a pressure sensor, and the signal is converted to an interactive force by a pre-calibrated human- machine interaction force model. The interactive force is fused with the sEMG, the joint angular displacement, and the internal pressure of the pneumatic muscle, then the movement intention of the operator is obtained based on the logistic regression algorithm. Experimental results show that the method for human motion intention recognition has the characters of fast response, accurate recognition and stability.
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