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Classification of cognitive and resting states of the brain using EEG features

机译:使用脑电图特征对大脑的认知和休息状态进行分类

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Human brain is considered as complex system having different mental states e.g., rest, active or cognitive states. It is well understood fact that brain activity increases with the cognitive load. This paper describes the cognitive and resting state classification based on EEG features. Previously, most of the studies used linear features. EEG signals are non-stationary in nature and have complex dynamics which is not fully mapped by linear methods. Here, we used non-linear feature extraction methods to classify the cognitive and resting states of the human brain. Data acquisition were carried out on eight healthy participants during cognitive state i.e., IQ task and rest conditions i.e., eyes open. After preprocessing, EEG features were extracted using both linear as well as non-linear. Further, these features were passed to the classifier. Results showed that with support vector machine (SVM), we achieved 87.5% classification accuracy with linear and 92.1% classification accuracy with non-linear features.
机译:人脑被认为是具有不同精神状态例如休息,活动或认知状态的复杂系统。众所周知,大脑活动随认知负荷增加而增加。本文描述了基于脑电图特征的认知和静息状态分类。以前,大多数研究都使用线性特征。脑电信号本质上是非平稳的,具有复杂的动力学,无法通过线性方法完全映射。在这里,我们使用非线性特征提取方法对人脑的认知和静止状态进行分类。在认知状态(即智商任务和休息条件,即睁开眼睛)期间,对八名健康参与者进行了数据采集。预处理后,使用线性和非线性提取脑电特征。此外,这些功能已传递给分类器。结果表明,使用支持向量机(SVM),我们实现了87.5%的线性分类精度和92.1%的非线性分类精度。

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