Estimation of user's hand motion based on EMG and EEG signals

K. Kiguchi, K. Tamura, Y. Hayashi
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引用次数: 1

Abstract

A surface EMG signal is one of the most widely used signals as input signals to wearable robots. However, EMG signals that are used to estimate motions are not always available to all users. On the other hand, an EEG signal has drawn attention as input signals for those robots in recent years. The EEG signals can be measured even with amputees and paralyzed patients who are not able to generate some EMG signals. However, the measured EEG signal does not have one-to-one relationships with the corresponding brain part. Therefore, it is more difficult to find the required signals for the control of the robot in accordance with the intention of the user's motion using the EEG signals compared with that using the EMG signals. In this paper, both the EMG and EEG signals are used to estimate the user's motion intention. In the proposed method, the EMG signals are used as main input signals because the EMG signals have higher relative to the motion of a user in comparison with the EEG signals. The EEG signals are used as sub signals in order to cover the estimation of the intention of the user's motion when all required EMG signals cannot be measured. The effectiveness of the proposed method has been evaluated by performing experiments.
基于肌电和脑电信号的用户手部运动估计
表面肌电信号是应用最广泛的可穿戴机器人输入信号之一。然而,用于估计运动的肌电信号并不总是适用于所有用户。另一方面,脑电图信号作为机器人的输入信号近年来备受关注。即使截肢者和瘫痪患者不能产生一些肌电图信号,也可以测量脑电图信号。然而,测量到的脑电图信号与相应的脑区并不是一一对应的关系。因此,与肌电信号相比,利用脑电信号更难找到根据用户运动意图对机器人进行控制所需的信号。在本文中,同时使用肌电和脑电信号来估计用户的运动意图。在该方法中,肌电信号作为主要输入信号,因为肌电信号相对于脑电信号具有更高的相对于用户的运动。利用脑电信号作为子信号,在无法测量到所需的所有肌电信号时覆盖对用户运动意图的估计。通过实验验证了该方法的有效性。
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