上肢伸展和抓握运动假体的研制与混合控制

Jin Huang, Guoxin Li, Qingsheng Meng, H. Xia, Yueyue Liu, Zhijun Li
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摘要

用具有同等性能和效能的人工装置代替人类上肢是一个长期存在的挑战。本文针对肱骨截肢患者,提出了一种利用肌电图和视觉信号控制上肢假体的混合型手抓任务规划方案。从被试身上提取肌电信号,经过训练和分类后,输入长短期记忆神经网络控制假肢的运动。视觉伺服模块旨在检测和定位目标,从而实时估计抓取模式。在我们的控制策略中,截肢者可以使用肌电信号来操作假肢,也可以随时激活视觉模块,视觉模块识别并定位要抓取的物体,然后根据预设的推理库移动假肢靠近物体并进行抓取,从而大大减轻了截肢者的认知和操作负担。最后,以左臂经肱骨截肢患者为例进行了实验,验证了上肢假体控制策略的有效性。结果表明,该混合控制方案为假肢的自由灵活控制提供了更多的选择。
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Development and Hybrid Control of an Upper Limb Prosthesis for Reach and Grasp Motions
Replacing the human upper limb with artificial devices of equal capability and effectiveness is a long-standing challenge. In this paper, a hybrid reach-to-grasp task planning scheme is proposed for transhumeral amputees exploiting both electromyography (EMG) and visual signals to control the upper limb prosthesis. EMG signals extracted from the subject are fed into the long short-term memery neural network to control the motion of the prosthesis after training and classification. The visual servoing module intends to detect and locate the object thus estimate grasping pattern in real time. In our control strategy, amputees are able to use the EMG signals to operate the prosthesis, and they can also activate the visual module at any moment, which recognizes and locates the object to be grabbed, and then moves the prosthesis close to the object and imposes grasping according the preset inference library, which reduces the cognitive and operational burden of amputees greatly. Finally, experiments are conducted on a patient with transhumeral left arm amputation to verify the effectiveness of the proposed control strategy using a upper limb prosthesis. The results showed that the hybrid control scheme brings more choices to control the prosthesis freely and flexibly.
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