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Using Black Hole Algorithm to Improve EEG-Based Emotion Recognition

机译:利用黑洞算法提高基于脑电乐的情感识别

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摘要

Emotions are a critical aspect of human behavior. One widely used technique for research in emotion measurement is based on the use of EEG signals. In general terms, the first step of signal processing is the elimination of noise, which can be done in manual or automatic terms. The next step is determining the feature vector using, for example, entropy calculation and its variations to generate a classification model. It is possible to use this approach to classify theoretical models such as the Circumplex model. This model proposes that emotions are distributed in a two-dimensional circular space. However, methods to determine the feature vector are highly susceptible to noise that may exist in the signal. In this article, a new method to adjust the classifier is proposed using metaheuristics based on the black hole algorithm. The method is aimed at obtaining results similar to those obtained with manual noise elimination methods. In order to evaluate the proposed method, the MAHNOB HCI Tagging Database was used. Results show that using the black hole algorithm to optimize the feature vector of the Support Vector Machine we obtained an accuracy of 92.56% over 30 executions.
机译:情绪是人类行为的关键方面。用于情感测量中的一种广泛使用的技术基于EEG信号的使用。一般而言,信号处理的第一步是消除噪声,其可以在手动或自动术语中完成。下一步骤是使用例如熵计算及其变型来确定要生成分类模型的变载量。可以使用这种方法来分类理论模型,例如环形模型。该模型提出了情绪分布在二维圆形空间中。然而,确定特征向量的方法高度易受信号中可能存在的噪声的影响。在本文中,使用基于黑洞算法的Metaheuristics提出了一种调整分类器的新方法。该方法旨在获得类似于用手动噪声消除方法获得的结果。为了评估所提出的方法,使用MAHNOB HCI标记数据库。结果表明,使用黑洞算法优化支持向量机的特征向量,我们获得了超过30个执行的精度为92.56%。

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