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CNN and LSTM-Based Emotion Charting Using Physiological Signals

机译:基于CNN和基于LSTM的情绪图表使用生理信号

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摘要

Novel trends in affective computing are based on reliable sources of physiological signals such as Electroencephalogram (EEG), Electrocardiogram (ECG), and Galvanic Skin Response (GSR). The use of these signals provides challenges of performance improvement within a broader set of emotion classes in a less constrained real-world environment. To overcome these challenges, we propose a computational framework of 2D Convolutional Neural Network (CNN) architecture for the arrangement of 14 channels of EEG, and a combination of Long Short-Term Memory (LSTM) and 1D-CNN architecture for ECG and GSR. Our approach is subject-independent and incorporates two publicly available datasets of DREAMER and AMIGOS with low-cost, wearable sensors to extract physiological signals suitable for real-world environments. The results outperform state-of-the-art approaches for classification into four classes, namely High Valence—High Arousal, High Valence—Low Arousal, Low Valence—High Arousal, and Low Valence—Low Arousal. Emotion elicitation average accuracy of is achieved with ECG right-channel modality, 76.65% with EEG modality, and 63.67% with GSR modality for AMIGOS. The overall highest accuracy of 99.0% for the AMIGOS dataset and 90.8% for the DREAMER dataset is achieved with multi-modal fusion. A strong correlation between spectral- and hidden-layer feature analysis with classification performance suggests the efficacy of the proposed method for significant feature extraction and higher emotion elicitation performance to a broader context for less constrained environments.
机译:情感计算的新趋势是基于诸如脑电图(EEG),心电图(ECG)和电流皮肤响应(GSR)的可靠的生理信号来源。这些信号的使用提供了在更少约束的真实环境中更广泛的情感课程内的性能改进的挑战。为了克服这些挑战,我们提出了一种用于EEG的14个通道的布置的2D卷积神经网络(CNN)架构的计算框架,以及用于ECG和GSR的长短期存储器(LSTM)和1D-CNN架构的组合。我们的方法是独立的,并用低成本,可穿戴传感器融合了两个公共可用的梦想家和amigos数据集,以提取适合真实环境的生理信号。结果优于最先进的方法,用于分类为四类,即高价值高唤起,高价值低唤起,低价值高唤起,低价值低唤醒。 ECG右声道模型的情感诱导平均准确性,EEG型号的76.65%,以及AMIGOS的GSR模型,63.67%。对于Amigos DataSet的总体最高精度为99.0%,对于梦想家数据集来实现90.8%,以多模态融合实现。频谱和隐藏层特征分析与分类性能之间的强烈相关性表明了提出的方法对于显着的特征提取和更高的情绪引发性能的功效,以对更少约束环境的更广泛的背景。

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