IEEE Trans Neural Syst Rehabil Eng. 2024;32:3147-3156. doi: 10.1109/TNSRE.2024.3449338. Epub 2024 Sep 2.
Hand motor impairment has seriously affected the daily life of the elderly. We developed an electromyography (EMG) exosuit system with bidirectional hand support for bilateral coordination assistance based on a dynamic gesture recognition model using graph convolutional network (GCN) and long short-term memory network (LSTM). The system included a hardware subsystem and a software subsystem. The hardware subsystem included an exosuit jacket, a backpack module, an EMG recognition module, and a bidirectional support glove. The software subsystem based on the dynamic gesture recognition model was designed to identify dynamic and static gestures by extracting the spatio-temporal features of the patient's EMG signals and to control glove movement. The offline training experiment built the gesture recognition models for each subject and evaluated the feasibility of the recognition model; the online control experiments verified the effectiveness of the exosuit system. The experimental results showed that the proposed model achieve a gesture recognition rate of 96.42% ± 3.26 %, which is higher than the other three traditional recognition models. All subjects successfully completed two daily tasks within a short time and the success rate of bilateral coordination assistance are 88.75% and 86.88%. The exosuit system can effectively help patients by bidirectional hand support strategy for bilateral coordination assistance in daily tasks, and the proposed method can be applied to various limb assistance scenarios.
手部运动障碍严重影响老年人的日常生活。我们开发了一种基于图卷积网络(GCN)和长短时记忆网络(LSTM)的动态手势识别模型的肌电图(EMG)外骨骼系统,具有双向手部支撑,用于双侧协调辅助。系统包括硬件子系统和软件子系统。硬件子系统包括外骨骼夹克、背包模块、EMG 识别模块和双向支撑手套。基于动态手势识别模型的软件子系统旨在通过提取患者 EMG 信号的时空特征来识别动态和静态手势,并控制手套运动。离线训练实验为每个受试者建立了手势识别模型,并评估了识别模型的可行性;在线控制实验验证了外骨骼系统的有效性。实验结果表明,所提出的模型的手势识别率达到 96.42%±3.26%,高于其他三个传统识别模型。所有受试者均在短时间内成功完成了两项日常任务,双侧协调辅助的成功率为 88.75%和 86.88%。外骨骼系统可以通过双向手部支撑策略为日常任务中的双侧协调辅助提供有效帮助,所提出的方法可应用于各种肢体辅助场景。