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Similarity analysis of EEG data based on self organizing map neural network

机译:基于自组织映射神经网络的脑电数据相似性分析

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摘要

The Electroencephalography (EEG) is the recording of electrical activity along the scalp. This recorded data are very complex. EEG has a big role in several applications such as in the diagnosis of human brain diseases and epilepsy. Also, we can use the EEG signals to control an external device via Brain Computer Interface (BCI) by our mind. There are many algorithms to analyse the recorded EEG data, but it still remains one of the big challenges in the world. In this article, we extended our previous proposed method. Our extended method uses Self-organizing Map (SOM) as an EEG data classifier. The proposed method we can divide in following steps: capturing EEG raw data from the sensors, applying filters on this data, we will use the frequencies in the range from 0.5~Hz to 60~Hz, smoothing the data with 15-th order of Polynomial Curve Fitting, converting filtered data into text using Turtle Graphic, Lempel-Ziv complexity for measuring similarity between two EEG data trials and Self-Organizing Map Neural Network as a final classifiers. The experiment results show that our model is able to detect up to 96% finger movements correctly.
机译:脑电图(EEG)是沿头皮的电活动记录。这些记录的数据非常复杂。脑电图在多种应用中起着重要作用,例如在人脑疾病和癫痫的诊断中。同样,我们可以脑中通过脑计算机接口(BCI)使用EEG信号来控制外部设备。有许多算法可以分析记录的EEG数据,但它仍然是世界上的一大挑战。在本文中,我们扩展了先前提出的方法。我们的扩展方法使用自组织映射(SOM)作为EEG数据分类器。建议的方法可以分为以下几步:从传感器捕获EEG原始数据,对这些数据应用滤波器,我们将使用0.5〜Hz到60〜Hz范围内的频率,将数据平滑15阶。多项式曲线拟合,使用Turtle Graphic将过滤后的数据转换为文本,Lempel-Ziv复杂性用于测量两个EEG数据试验之间的相似性,而自组织地图神经网络作为最终分类器。实验结果表明,我们的模型能够正确检测高达96%的手指运动。

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