基于脑电图的改进主题无关情绪识别的领域广义深度学习。

IF 1.8 4区 医学 Q3 MEDICINE, RESEARCH & EXPERIMENTAL
Jung-Hwan Kim, Hyerin Nam, Doyeon Won, Chang-Hwan Im
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引用次数: 0

摘要

脑电图(EEG)为包括情绪识别在内的一系列实际应用提供了高时间分辨率和非侵入性。然而,科目之间的内在可变性对模型的可泛化性提出了重大挑战。在本研究中,我们通过将Deep CORAL、GroupDRO、VREx和DANN四种领域泛化(DG)技术与三种具有代表性的深度学习架构(ShallowFBCSPNet、EEGNet和TSception)相结合,系统地评估了12种方法,以实现改进的独立于受试者的基于eeg的情感识别。利用作者收集的两个情绪脑电图数据集,定量评价了dg集成深度学习模型的性能。每个受试者的数据在每个模型中被视为不同的域。二元分类任务是基于十倍交叉验证策略来识别每个参与者的效价或唤醒状态。结果表明,DG方法的应用一致地提高了不同数据集的分类精度。在一个数据集中,TSception结合VREx在效价和唤醒分类上都取得了最高的性能。在另一个数据集中,TSception与VREx的分类准确率仍然最高,而TSception与GroupDRO的分类准确率在12个模型中表现最好,略优于TSception与VREx的分类准确率。这些发现强调了DG方法在缓解由主体间和会话间变量引起的分布变化方面的潜力,从而实现健壮的基于主体独立的基于脑电图的情感识别系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Domain-generalized Deep Learning for Improved Subject-independent Emotion Recognition Based on Electroencephalography.

Electroencephalography (EEG) provides high temporal resolution and noninvasiveness for a range of practical applications, including emotion recognition. However, inherent variability across subjects poses significant challenges to model generalizability. In this study, we systematically evaluated twelve approaches by combining four domain generalization (DG) techniques, Deep CORAL, GroupDRO, VREx, and DANN, with three representative deep learning architectures (ShallowFBCSPNet, EEGNet, and TSception) to enable improved subject-independent EEG-based emotion recognition. The performances of the DG-integrated deep learning models were quantitatively evaluated using two emotional EEG datasets collected by the authors. Data from each subject were treated as distinct domains in each model. Binary classification tasks were conducted to identify the valence or arousal state of each participant based on a ten-fold cross-validation strategy. The results indicated that the application of DG methods consistently enhanced classification accuracy across datasets. In one dataset, TSception combined with VREx achieved the highest performance for both valence and arousal classifications. In the other dataset, TSception with VREx still yielded the highest valence classification accuracy, while TSception combined with GroupDRO showed the best arousal classification performance among the twelve models, slightly outperforming TSception with VREx. These findings underscore the potential of DG approaches to mitigate distributional shifts caused by intersubject and intersession variabilities to implement robust subject-independent EEG-based emotion recognition systems.

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来源期刊
Experimental Neurobiology
Experimental Neurobiology Neuroscience-Cellular and Molecular Neuroscience
CiteScore
4.30
自引率
4.20%
发文量
29
期刊介绍: Experimental Neurobiology is an international forum for interdisciplinary investigations of the nervous system. The journal aims to publish papers that present novel observations in all fields of neuroscience, encompassing cellular & molecular neuroscience, development/differentiation/plasticity, neurobiology of disease, systems/cognitive/behavioral neuroscience, drug development & industrial application, brain-machine interface, methodologies/tools, and clinical neuroscience. It should be of interest to a broad scientific audience working on the biochemical, molecular biological, cell biological, pharmacological, physiological, psychophysical, clinical, anatomical, cognitive, and biotechnological aspects of neuroscience. The journal publishes both original research articles and review articles. Experimental Neurobiology is an open access, peer-reviewed online journal. The journal is published jointly by The Korean Society for Brain and Neural Sciences & The Korean Society for Neurodegenerative Disease.
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