Technology advancements made it easy to measure non-invasive and high-quality electroencephalograph (EEG) signals from human's brain. Hence, development of robust and high-performance AI algorithms becomes crucial to properly process the EEG signals and recognize the patterns, which lead to an appropriate control signal. Despite the advancements in processing the motor imagery EEG signals, the healthcare applications, such as emotion detection, are still in the early stages of AI design. In this paper, we propose a modular framework for the recognition of vowels as the AI part of a brain computer interface system. We carefully designed the modules to discriminate the English vowels given the raw EEG signals, and meanwhile avoid the typical issued with the data-poor environments like most of the healthcare applications. The proposed framework consists of appropriate signal segmentation, filtering, extraction of spectral features, reducing the dimensions by means of principle component analysis, and finally a multi-class classification by decision-tree-based support vector machine (DT-SVM). The performance of our framework was evaluated by a combination of test-set and resubstitution (also known as apparent) error rates. We provide the algorithms of the proposed framework to make it easy for future researchers and developers who want to follow the same workflow.
翻译:技术进步使测量人类大脑的非侵入性和高品质电子感官学信号变得容易。因此,开发稳健和高性能的AI算法对于适当处理EEG信号和识别模式至关重要,从而导致适当的控制信号。尽管在处理运动图像EEEG信号方面取得了进展,但情感检测等保健应用,仍然处于AI设计的早期阶段。在本文件中,我们提议了一个模块框架,以确认元音为大脑计算机界面系统的AI部分。我们仔细设计了模块,以区别英国元音,因为原始EEEG信号是原始的,同时避免了与大多数保健应用软件等数据贫乏环境一起发布的典型的信号。拟议框架包括适当的信号分割、过滤、光谱特征的提取、通过原则组成部分分析手段降低维度,以及最终通过基于决定的树基支持矢量机(DT-SVM)进行多级分类。我们框架的性能通过测试设置和重新替代(也称为明显的)错误率相结合来评价(我们知道),同时避免了与大多数保健应用中的数据差率。我们为研究人员提供了拟议的框架的比较容易的未来方向。我们提供了一种算法。