Comparing the Performances of Ensemble classifiers to Detect Eye Stat

K. Akyol, Abdulkadir Karacı
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Abstract

Brain signals required for the brain-computer interface are obtained through the electroencephalography (EEG) method. EEG data is used in the analysis of many problems such as epileptic seizure detection, bipolar mood disorder, attention deficit, and detection of the sleep state of the vehicle driver. It is very important to determine whether the eye is open or closed, which is a substantial organ for the determination of the cognitive state of the person. The aim of this paper is to present a stable and successful model for detecting the eye states that are opened or closed. In this context, the performances of several ensemble classifiers were examined on the Emotiv EEG Neuroheadset dataset, which has 14 features excluding the target variable, 14980 records that have 8225 eye states opened and 6755 eye states closed. In the experiments, firstly the min-max normalization process was applied to the dataset, and then the classification performances of these classifiers were evaluated via a 5-fold cross-validation technique. The performance of each model was measured using accuracy, sensitivity, and specificity metrics. The obtained results show that the Random Forest algorithm is an acceptable level with 92.61% value of accuracy, 94.31% value of sensitivity and 91.36% value of specificity for detecting the eye state.
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集成分类器在眼状态检测中的性能比较
脑机接口所需的脑信号是通过脑电图(EEG)方法获得的。脑电图数据被用于分析癫痫发作检测、双相情感障碍、注意缺陷、车辆驾驶员睡眠状态检测等诸多问题。确定眼睛是睁眼还是闭眼是非常重要的,这是确定人的认知状态的一个重要器官。本文的目的是提出一个稳定和成功的模型来检测眼睛的状态是打开或关闭。在此背景下,在Emotiv EEG Neuroheadset数据集上测试了几种集成分类器的性能,该数据集具有14个特征(不包括目标变量),14980条记录有8225个眼睛状态打开和6755个眼睛状态关闭。在实验中,首先对数据集应用最小-最大归一化过程,然后通过5倍交叉验证技术评估这些分类器的分类性能。使用准确性、敏感性和特异性指标来测量每个模型的性能。结果表明,随机森林算法检测眼睛状态的准确率为92.61%,灵敏度为94.31%,特异性为91.36%,是一个可接受的水平。
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