使用脑-心相互作用测量和可解释的卷积神经网络的细粒度情绪识别

G. Gagliardi, A. L. Alfeo, V. Catrambone, M. G. Cimino, Marina De Vos, G. Valenza
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引用次数: 0

摘要

基于电生理信号的情绪识别是多个科学领域的重要研究课题。虽然多模态输入可能导致增加情感识别性能的额外信息,但这种矢量输入的最佳处理管道尚未定义。此外,算法性能经常在情感维度的泛化能力和与其识别准确性相关的可解释性之间妥协。本研究提出了一种新的可解释的人工智能架构,用于从脑电图(EEG)和心电图(ECG)信号中识别9级价。结合同步脑电图-心电信息得到向量脑-心相互作用特征,将其重新排列成稀疏矩阵(图像),然后通过可解释的卷积神经网络进行分类。所提出的架构在公开可用的MAHNOB数据集上进行了测试,并与使用向量脑电图输入进行了对比。结果,也用混淆矩阵表示,优于目前的技术,特别是在识别精度方面。总之,我们证明了所提出的方法以可解释的方式嵌入多模态脑-心动力学的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fine-Grained Emotion Recognition Using Brain-Heart Interplay Measurements and eXplainable Convolutional Neural Networks
Emotion recognition from electro-physiological signals is an important research topic in multiple scientific domains. While a multimodal input may lead to additional information that increases emotion recognition performance, an optimal processing pipeline for such a vectorial input is yet undefined. Moreover, the algorithm performance often compromises between the ability to generalize over an emotional dimension and the explainability associated with its recognition accuracy. This study proposes a novel explainable artificial intelligence architecture for a 9-level valence recognition from electroencephalographic (EEG) and electrocardiographic (ECG) signals. Synchronous EEG-ECG information are combined to derive vectorial brain-heart interplay features, which are rearranged in a sparse matrix (image) and then classified through an explainable convolutional neural network. The proposed architecture is tested on the publicly available MAHNOB dataset also against the use of vectorial EEG input. Results, also expressed in terms of confusion matrices, outperform the current state of the art, especially in terms of recognition accuracy. In conclusion, we demonstrate the effectiveness of the proposed approach embedding multimodal brain-heart dynamics in an explainable fashion.
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