Toth Jake, Arvaneh Mahnaz
Annu Int Conf IEEE Eng Med Biol Soc. 2017 Jul;2017:1018-1021. doi: 10.1109/EMBC.2017.8036999.
In this paper muscle and gyroscope signals provided by a low cost EEG headset were used to classify six different facial expressions. Muscle activities generated by facial expressions are seen in EEG data recorded from scalp. Using the already present EEG device to classify facial expressions allows for a new hybrid brain-computer interface (BCI) system without introducing new hardware such as separate electromyography (EMG) electrodes. To classify facial expressions, time domain and frequency domain EEG data with different sampling rates were used as inputs of the classifiers. The experimental results showed that with sampling rates and classification methods optimized for each participant and feature set, high accuracy classification of facial expressions was achieved. Moreover, adding information extracted from a gyroscope embedded into the used EEG headset increased the performance by an average of 9 to 16%.
在本文中,使用低成本脑电图(EEG)头戴设备提供的肌肉和陀螺仪信号对六种不同的面部表情进行分类。面部表情产生的肌肉活动可在从头皮记录的脑电图数据中观察到。利用现有的脑电图设备对面部表情进行分类,可实现一种新的混合脑机接口(BCI)系统,而无需引入新的硬件,如单独的肌电图(EMG)电极。为了对面部表情进行分类,将具有不同采样率的时域和频域脑电图数据用作分类器的输入。实验结果表明,通过针对每个参与者和特征集优化采样率和分类方法,实现了面部表情的高精度分类。此外,添加从所用脑电图头戴设备中嵌入的陀螺仪提取的信息,可使性能平均提高9%至16%。