论文标题

CNS和PNS信号的空间和功能性大脑映射基于EEG的情绪识别

EEG-based Emotion Recognition with Spatial and Functional Brain Mapping of CNS and PNS Signals

论文作者

Cen, Zhiyao, Deng, Xiangwen, Zheng, Hengjie, Zhao, Jianing, Jin, Anjie, Fu, Chentao, Wang, Tianqi, Yang, Shangming, Yang, Jingdian

论文摘要

情绪在我们的日常生活中起着重要作用。在医疗保健和人类计算机互动的领域,人们对情感的认识广泛广泛。情绪是皮质和皮层神经过程协调活动的结果,这与特定的生理反应相关。但是,现有的情感识别技术未能将各种生理信号结合在一起,作为一个综合特征表示。同时,许多研究人员以高准确性忽略了过度合适模型的问题,这实际上是由于预处理不当而导致的高准确性。在本文中,进行了乙状结肠基线滤波,以解决源头的过度​​问题。为了构建一种基于生理的算法,提出了基于人类生理机制和国际电极系统的3D空间和功能性脑映射,该算法结合了中枢和外围神经系统的信号。通过结合基线滤波,3D脑映射和简单的4D-CNN,最终提出了一种新型的情感识别模型。实验结果表明,所提出的模型的性能与艺术算法的状态相当。

Emotion plays a significant role in our daily life. Recognition of emotion is wide-spread in the field of health care and human-computer interaction. Emotion is the result of the coordinated activities of cortical and subcortical neural processes, which correlate to specific physiological responses. However, the existing emotion recognition techniques failed to combine various physiological signals as one integrated feature representation. Meanwhile, many researchers ignored the problem of over-fitting model with high accuracy, which was actually false high accuracy caused by improper pre-processing. In this paper, sigmoid baseline filtering is conducted to solve the over-fitting problem from source. To construct a physiological-based algorithm, a 3D spatial and functional brain mapping is proposed based on human physiological mechanism and international electrode system, which combines the signals of the central and peripheral nervous system together. By combining the baseline filtering, 3D brain mapping, and simple 4D-CNN, a novel emotion recognition model is finally proposed. Experiment results demonstrate that the performance of the proposed model is comparable to the state of art algorithms.

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