A performance analysis of user's intention classification from EEG signal by a computational intelligence in BCI

C. Lim, Chang Young Lee, Yongmin Kim
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引用次数: 3

Abstract

Knowing the user's intentions is very important and can be useful in our daily life. It would be a very useful way, especially if people with disabilities can use these functions as a means of self-expression. The user's intension classification is a kind of common time-series problem for detecting human cognitive state. In this paper, we classify user intention by analyzing EEG signal using machine learning in BCI. The performance of the classification accuracy can be achieved by using the proposed approach in terms of the number of neurons in the hidden layer, which also leads types of membership function in fuzzy rules. We prepared training and test data using the Emotive headset for the experiment. Our experimental results show that the proposed approach gives us a quite promising method with 5 fuzzy rules obtained through a fuzzy C-means clustering. It is a simple fuzzy system with neural network structure by tuning GA providing statistically superior solutions. Experimental results show that the best results were obtained using the electrode position {F7, F8, FC5, FC6} of EEG. Experimental results using training data showed an accuracy of 94.2%. However, the result of using the test data after learning shows a slightly lower accuracy of 92.3%. This experiment shows that using training data and test dares can result in more than 90% accuracy. Experimental results show that all 4--action behaviors have similar accuracy.
脑机接口中基于脑电信号的用户意图分类性能分析
了解用户的意图非常重要,在我们的日常生活中也很有用。这将是一种非常有用的方式,特别是如果残疾人可以使用这些功能作为自我表达的手段。用户意向分类是检测人类认知状态的一种常见的时间序列问题。在本文中,我们利用脑机接口中的机器学习对脑电信号进行分类。根据隐层中神经元的数量,采用该方法可以实现分类精度的性能,这也导致了模糊规则中隶属函数的类型。我们为实验准备了Emotive头戴式耳机的训练和测试数据。实验结果表明,该方法通过模糊c均值聚类得到5条模糊规则,为我们提供了一种很有前途的方法。它是一个简单的模糊系统,具有神经网络结构,通过调整遗传算法提供统计上优越的解决方案。实验结果表明,采用脑电的电极位置{F7, F8, FC5, FC6}得到的结果最好。使用训练数据的实验结果显示准确率为94.2%。然而,学习后使用测试数据的结果显示准确率略低,为92.3%。实验表明,使用训练数据和测试数据可以达到90%以上的准确率。实验结果表明,所有4-动作行为具有相似的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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