利用聚类分析的方法,探讨使用单电极脑机接口设备进行人机交互的可能性

Ali H. Ali, Raed S. H. AL-Musawi
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引用次数: 2

摘要

消费级脑机接口(BCI)的使用引起了研究人员和社区等爱好者的极大兴趣。它被认为是控制机器人、提高学习经验甚至分类思维模式的可行手段。本文研究了使用NeuroSky Mindwave耳机的可能性,这是一种非常便宜和流行的单电极脑机接口,通过无监督机器学习算法进行此类努力。首先,采集10名被试进行各种心理活动时的原始脑电图信号。心理活动范围从听轻松的音乐到做数学计算。其次,对脑电信号进行滤波,得到Gamma、Beta、Alpha、Theta和Delta脑电波。最后,采用k-means、模糊c-means和自组织映射(SOMs)聚类算法,根据脑电波的相似度对其进行分组。采用距离度量图、聚类轮廓、Calinski-Harabasz指数和Davies-Bouldin指数对聚类算法的性能进行了基准测试。K-means聚类算法已经显示出将不同的心理活动分类的能力。当聚类数为3时,最小均值剪影值为0.475,登记的最高ch指数为65.7。这些结果显示了在应用程序中使用MindWave耳机的一个有趣的可能性,在这些应用程序中,要收集的心理活动的数量可能最多不超过2或3个。
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Investigating the possibility of using a single electrode brain-computer interface device for human machine interaction by means of cluster analysis
The use of a consumer-grade Brain-Computer Interface (BCI) has seen significant interests among researchers and hobbyists like communities. It has been suggested as a viable mean to control robots, improve learning experience and even to classify thought patterns. This paper investigates the possibility of using the NeuroSky Mindwave headset, a very cheap and popular single electrode BCI, for such endeavors by means of unsupervised machine learning algorithms. Firstly, the raw Electroencephalography (EEG) signals from 10 different subjects were acquired while they performed various mental activities. The mental activities ranged from listening to relaxing music to doing mathematical calculations. Secondly, the EEG signals were filtered to obtain the Gamma, Beta, Alpha, Theta and Delta brainwaves. Finally, k-means, fuzzy c-means and Self-Organizing Maps (SOMs) clustering algorithms have been applied to group the brainwaves according to their similarities. The performance of the cluster algorithms was benchmarked using distance metric maps, cluster silhouettes, Calinski-Harabasz index and Davies-Bouldin index. K-means clustering algorithm has showed some power of separating different mental activities into groups. The minimum Mean Silhouette Value has been found to be 0.475 when the number of clusters is 3 and the highest CH-index registered has been 65.7. These results show an interesting possibility for using the MindWave headset in applications where the number of mental activities to be harvested may not be greater than 2 or 3 at most.
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