An Emotion Recognition Method Based On Feature Fusion and Self-Supervised Learning

Xuan-Nam Cao, Ming Sun
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Abstract

Emotional diseases being represented in many kinds of human mental and cardiac problems, demanding requirements are imposed on accurate emotion recognition. Deep learning methods have gained widespread application in the field of emotion recognition, utilizing physiological signals. However, many existing methods rely solely on deep features, which can be difficult to interpret and may not provide a comprehensive understanding of physiological signals. To address this issue, we propose a novel emotion recognition method based on feature fusion and self-supervised learning. This approach combines shallow features and deep learning features, resulting in a more holistic and interpretable approach to analyzing physiological signals. In addition, we transferred the self-supervised learning method from processing images to signals, which learns sophisticated and informative features from unlabeled signal data. Our experimental results are conducted on WESAD, a publicly available dataset and the proposed model shows significant improvement in performance, which confirms the superiority of our proposed method compared to state-of-the-art methods.
基于特征融合和自监督学习的情绪识别方法
情绪疾病是人类精神和心脏疾病的多种表现形式,对准确的情绪识别提出了很高的要求。深度学习方法利用生理信号在情绪识别领域得到了广泛的应用。然而,许多现有的方法仅仅依赖于深层特征,这可能难以解释,并且可能无法提供对生理信号的全面理解。为了解决这一问题,我们提出了一种基于特征融合和自监督学习的情感识别方法。这种方法结合了浅特征和深度学习特征,产生了一种更全面和可解释的方法来分析生理信号。此外,我们将自监督学习方法从处理图像转移到信号,从未标记的信号数据中学习复杂且信息丰富的特征。我们的实验结果是在WESAD(一个公开可用的数据集)上进行的,所提出的模型在性能上显示出显着的改进,这证实了我们所提出的方法与最先进的方法相比的优越性。
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