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Improving the accuracy of EEG emotion recognition by combining valence lateralization and ensemble learning with tuning parameters

机译:通过调整参数组合价横向化和集合学习来提高脑电图情感识别的准确性

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For emotion recognition using EEG signals, the challenge is improving accuracy. This study proposes strategies that concentrate on incorporating emotion lateralization and ensemble learning approach to enhance the accuracy of EEG-based emotion recognition. In this paper, we obtained EEG signals from an EEG-based public emotion dataset with four classes (i.e. happy, sad, angry and relaxed). The EEG signal is acquired from pair asymmetry channels from left and right hemispheres. EEG features were extracted using a hybrid features extraction from three domains, namely time, frequency and wavelet. To demonstrate the lateralization, we performed a set of four experimental scenarios, i.e. without lateralization, right-/left-dominance lateralization, valence lateralization and others lateralization. For emotion classification, we use random forest (RF), which is known as the best classifier in ensemble learning. Tuning parameters in the RF model were done by grid search optimization. As a comparison of RF, we employed two prevalent algorithms in EEG, namely SVM and LDA. Emotion classification accuracy increased significantly from without lateralization to the valence lateralization using three pairs of asymmetry channel, i.e. T7-T8, C3-C4 and O1-O2. For the classification, the RF method provides the highest accuracy of 75.6% compared to SVM of 69.8% and LDA of 60.4%. In addition, the features of energy-entropy from wavelet are important for EEG emotion recognition. This study yields a significant performance improvement of EEG-based emotion recognition by the valence emotion lateralization. It indicates that happy and relaxed emotions are dominant in the left hemisphere, while angry and sad emotions are better recognized from the right hemisphere.
机译:对于使用EEG信号的情感识别,挑战是提高准确性。本研究提出了专注于纳入情感横向化和集合学习方法的策略,以提高基于EEG的情感识别的准确性。在本文中,我们从有四个类别获得了来自基于EEG的公共情绪数据集的EEG信号(即,快乐,悲伤,愤怒和放松)。从左右半球的对不对称通道获取EEG信号。使用从三个域提取的混合特征提取EEG特征,即时间,频率和小波。为了证明横向化,我们进行了一组四种实验场景,即没有横向化,右侧/左统治横向化,价横向化和其他侧向化。对于情感分类,我们使用随机森林(RF),被称为集合学习中最佳分类器。通过网格搜索优化完成RF模型中的调整参数。作为RF的比较,我们在EEG中使用了两个普遍的算法,即SVM和LDA。情感分类精度从使用三对不对称通道的价横向化,即使用三对不对称通道,即T7-T8,C3-C4和O1-O2,显着增加。对于分类,RF方法提供75.6%的最高精度,而69.8%,LDA为60.4%。此外,来自小波的能量熵的特征对于脑电图情感识别很重要。本研究通过价情绪横向化产生了基于EEG的情感识别的显着性能。它表明,快乐和轻松的情绪在左半球占主导地位,而愤怒和悲伤的情绪从右半球更好地识别出来。

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