一种基于脑电和表面肌电活动的新型多模态人体外骨骼界面康复训练

Kecheng Shi, Rui Huang, Fengjun Mu, Zhinan Peng, Ke Huang, Y. Qin, Xiao Yang, Hong Cheng
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引用次数: 1

摘要

尽管基于生物神经信号的人机界面(HRI)领域取得了进展,但利用脚底脑电图(EEG)信号来帮助机器人外骨骼预测肢体运动,由于其不可靠,目前在康复训练中还不成熟。多模态HRI是提高单模态HRI性能的最新解决方案。这些HRI通常包括脑电图信号和表面肌电图信号。然而,它们在偏瘫患者下肢运动预测中的应用仍然有限,并且忽略了表面肌电信号和脑电图信号的深度融合特征。提出了一种基于密集共注意机制的多模态增强融合网络(DMEFNet),用于偏瘫患者下肢运动预测。DMEFNet可以实现表面肌电信号和脑电信号特征的映射和深度融合,得到高精度的下肢运动预测。设计了一个表面肌电信号和脑电图数据采集实验和一个不完全异步数据采集范式来验证DMEFNet的有效性。实验结果表明,DMEFNet在主题内和跨主题情况下都具有良好的运动预测性能,准确率分别达到82.96%和88.44%。
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A Novel Multimodal Human-Exoskeleton Interface Based on EEG and sEMG Activity for Rehabilitation Training
Despite the advances in the field of human-robot interface (HRI) based on biological neural signal, the use of the sole electroencephalography (EEG) signal to help robotic exoskeleton predict the limb movement is currently no mature in rehabilitation training, due to its unreliability. Multimodal HRI represents a very recent solution to enhance the performance of single modal HRI. These HRI normally include the EEG signal with surface electromyography (sEMG) signal. However, their use for the lower limb movement prediction in hemiplegia is still limited, and the deep fusion feature of sEMG and EEG signal is ignored. This paper proposes a Dense co-attention mechanism-based Multimodal Enhance fusion Network (DMEFNet) for the lower limb movement prediction in hemiplegia. The DMEFNet can realize the mapping and deep fusion between the sEMG and EEG signal features and get a high accuracy movement prediction of the lower limbs. A sEMG and EEG data acquisition experiment and an incomplete asynchronous data collection paradigm are designed to verify the effectiveness of DMEFNet. The experimental results show that DMEFNet has a good movement prediction performance in both within-subject and cross-subject situations, reaching an accuracy of 82.96% and 88.44% respectively.
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