High-Accuracy Classification of Multiple Distinct Human Emotions Using EEG Differential Entropy Features and ResNet18

Longxin Yao, Yun Lu, Yukun Qian, Changjun He, Mingjiang Wang
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Abstract

The high-accuracy detection of multiple distinct human emotions is crucial for advancing affective computing, mental health diagnostics, and human–computer interaction. The integration of deep learning networks with entropy measures holds significant potential in neuroscience and medicine, especially for analyzing EEG-based emotion states. This study proposes a method combining ResNet18 with differential entropy to identify five types of human emotions (happiness, sadness, fear, disgust, and neutral) from EEG signals. Our approach first calculates the differential entropy of EEG signals to capture the complexity and variability of the emotional states. Then, the ResNet18 network is employed to learn feature representations from the differential entropy measures, which effectively captures the intricate spatiotemporal dynamics inherent in emotional EEG patterns using residual connections. To validate the efficacy of our method, we conducted experiments on the SEED-V dataset, achieving an average accuracy of 95.61%. Our findings demonstrate that the combination of ResNet18 with differential entropy is highly effective in classifying multiple distinct human emotions from EEG signals. This method shows robust generalization and broad applicability, indicating its potential for extension to various pattern recognition tasks across different domains.
利用脑电图差分熵特征和 ResNet 对多种人类情绪进行高精度分类18
高精度地检测多种不同的人类情绪对于推进情感计算、心理健康诊断和人机交互至关重要。深度学习网络与熵测量的整合在神经科学和医学领域具有巨大潜力,尤其是在分析基于脑电图的情绪状态方面。本研究提出了一种结合 ResNet18 和差分熵的方法,可从脑电信号中识别五种人类情绪(快乐、悲伤、恐惧、厌恶和中性)。我们的方法首先计算脑电信号的差分熵,以捕捉情绪状态的复杂性和可变性。然后,利用 ResNet18 网络从差分熵度量中学习特征表示,从而利用残差连接有效捕捉情绪脑电图模式中固有的复杂时空动态。为了验证我们方法的有效性,我们在 SEED-V 数据集上进行了实验,取得了 95.61% 的平均准确率。我们的研究结果表明,ResNet18 与差分熵的结合在从脑电信号对多种不同的人类情绪进行分类方面非常有效。这种方法显示出强大的泛化能力和广泛的适用性,表明它有潜力扩展到不同领域的各种模式识别任务中。
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