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A novel approach to emotion recognition using local subset feature selection and modified Dempster-Shafer theory

机译:一种新颖的情感识别方法,使用本地子集特征选择和改进的Dempster-Shafer理论

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摘要

Abstract Background Emotion recognition is an increasingly important field of research in brain computer interactions. Introduction With the advance of technology, automatic emotion recognition systems no longer seem far-fetched. Be that as it may, detecting neural correlates of emotion has remained a substantial bottleneck. Settling this issue will be a breakthrough of significance in the literature. Methods The current study aims to identify the correlations between different emotions and brain regions with the help of suitable electrodes. Initially, independent component analysis algorithm is employed to remove artifacts and extract the independent components. The informative channels are then selected based on the thresholded average activity value for obtained components. Afterwards, effective features are extracted from selected channels common between all emotion classes. Features are reduced using the local subset feature selection method and then fed to a new classification model using modified Dempster-Shafer theory of evidence. Results The presented method is employed to DEAP dataset and the results are compared to those of previous studies, which highlights the significant ability of this method to recognize emotions through electroencephalography, by the accuracy of about 91%. Finally, the obtained results are discussed and new aspects are introduced. Conclusions The present study addresses the long-standing challenge of finding neural correlates between human emotions and the activated brain regions. Also, we managed to solve uncertainty problem in emotion classification which is one of the most challenging issues in this field. The proposed method could be employed in other practical applications in future.
机译:摘要背景情绪识别是脑电脑互动中越来越重要的研究领域。引进技术进展,自动情感识别系统不再似乎远。尽管如此,检测到的神经相关的情绪相关性仍然是一个实质性的瓶颈。解决这个问题将是文献中重要意义的突破。方法目前的研究旨在鉴定不同情绪与大脑区域之间的相关性,在合适的电极的帮助下。最初,采用独立分量分析算法来删除伪像并提取独立组件。然后基于所获得的组件的阈值平均活动值来选择信息频道。之后,从所有情绪类别之间的所选通道中提取有效特征。使用本地子集特征选择方法减少了功能,然后使用修改的Dempster-Shafer证据理论馈送到新的分类模型。结果将呈现的方法用于DEAP数据集,并将结果与​​先前研究的结果进行比较,这突出了这种方法通过脑电图识别情绪的显着能力,通过约91%的准确性。最后,讨论了所得结果,并介绍了新的方面。结论本研究解决了发现人类情绪与激活的脑区之间的神经相关性的长期挑战。此外,我们设法解决了情感分类中的不确定性问题,这是该领域最具挑战性问题之一。该方法将来可以在其他实际应用中使用。

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