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Hyperdimensional Computing-based Multimodality Emotion Recognition with Physiological Signals

机译:基于超维计算的生理信号多模态情绪识别

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To interact naturally and achieve mutual sympathy between humans and machines, emotion recognition is one of the most important function to realize advanced human-computer interaction devices. Due to the high correlation between emotion and involuntary physiological changes, physiological signals are a prime candidate for emotion analysis. However, due to the need of a huge amount of training data for a high-quality machine learning model, computational complexity becomes a major bottleneck. To overcome this issue, brain-inspired hyperdimensional (HD) computing, an energy-efficient and fast learning computational paradigm, has a high potential to achieve a balance between accuracy and the amount of necessary training data. We propose an HD Computing-based Multimodality Emotion Recognition (HDC-MER). HDCMER maps real-valued features to binary HD vectors using a random nonlinear function, and further encodes them over time, and fuses across different modalities including GSR, ECG, and EEG. The experimental results show that, compared to the best method using the full training data, HDC-MER achieves higher classification accuracy for both valence (83.2% vs. 80.1%) and arousal (70.1% vs. 68.4%) using only 1/4 training data. HDC-MER also achieves at least 5% higher averaged accuracy compared to all the other methods in any point along the learning curve.
机译:为了自然交互并实现人与机器之间的相互同情,情感识别是实现高级人机交互设备的最重要功能之一。由于情绪与非自愿生理变化之间的高度相关性,生理信号是进行情绪分析的主要候选者。但是,由于对于高质量的机器学习模型需要大量的训练数据,因此计算复杂性成为主要瓶颈。为了克服这个问题,脑启发式超维(HD)计算是一种节能高效的快速学习计算范例,具有在准确性和必要训练数据量之间取得平衡的巨大潜力。我们提出了一种基于高清计算的多模态情感识别(HDC-MER)。 HDCMER使用随机非线性函数将实值特征映射到二进制HD向量,并随时间进一步对其进行编码,并融合包括GSR,ECG和EEG在内的不同模式。实验结果表明,与使用完整训练数据的最佳方法相比,HDC-MER仅使用1/4的价数(83.2%vs. 80.1%)和唤醒(70.1%vs. 68.4%)都实现了更高的分类精度训练数据。与所有其他方法相比,HDC-MER在学习曲线上的任何一点都比其他方法至少提高了5%。

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