Faculty of Engineering Science, Kansai University, Osaka 564-8680, Japan.
Sensors (Basel). 2024 Apr 25;24(9):2741. doi: 10.3390/s24092741.
Brain-computer interfaces (BCIs) allow information to be transmitted directly from the human brain to a computer, enhancing the ability of human brain activity to interact with the environment. In particular, BCI-based control systems are highly desirable because they can control equipment used by people with disabilities, such as wheelchairs and prosthetic legs. BCIs make use of electroencephalograms (EEGs) to decode the human brain's status. This paper presents an EEG-based facial gesture recognition method based on a self-organizing map (SOM). The proposed facial gesture recognition uses α, β, and θ power bands of the EEG signals as the features of the gesture. The SOM-Hebb classifier is utilized to classify the feature vectors. We utilized the proposed method to develop an online facial gesture recognition system. The facial gestures were defined by combining facial movements that are easy to detect in EEG signals. The recognition accuracy of the system was examined through experiments. The recognition accuracy of the system ranged from 76.90% to 97.57% depending on the number of gestures recognized. The lowest accuracy (76.90%) occurred when recognizing seven gestures, though this is still quite accurate when compared to other EEG-based recognition systems. The implemented online recognition system was developed using MATLAB, and the system took 5.7 s to complete the recognition flow.
脑机接口(BCI)允许信息直接从人脑传输到计算机,增强了人类大脑活动与环境交互的能力。特别是,基于 BCI 的控制系统是非常理想的,因为它们可以控制残疾人使用的设备,如轮椅和假肢。BCI 利用脑电图(EEG)来解码人脑的状态。本文提出了一种基于自组织映射(SOM)的 EEG 面部手势识别方法。所提出的面部手势识别方法使用 EEG 信号的α、β和θ频段作为手势的特征。利用 SOM-Hebb 分类器对特征向量进行分类。我们利用提出的方法开发了一个在线面部手势识别系统。通过结合 EEG 信号中易于检测的面部运动来定义面部手势。通过实验检查了系统的识别准确性。系统的识别准确率根据识别的手势数量从 76.90%到 97.57%不等。当识别七个手势时,系统的准确率最低(76.90%),但与其他基于 EEG 的识别系统相比,这仍然相当准确。所实现的在线识别系统是使用 MATLAB 开发的,系统完成识别流程需要 5.7 秒。