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An Ensemble Learning Approach for Electrocardiogram Sensor Based Human Emotion Recognition

机译:基于心电图传感器的人类情绪识别的整体学习方法

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摘要

Recently, researchers in the area of biosensor based human emotion recognition have used different types of machine learning models for recognizing human emotions. However, most of them still lack the ability to recognize human emotions with higher classification accuracy incorporating a limited number of bio-sensors. In the domain of machine learning, ensemble learning methods have been successfully applied to solve different types of real-world machine learning problems which require improved classification accuracies. Emphasising on that, this research suggests an ensemble learning approach for developing a machine learning model that can recognize four major human emotions namely: anger; sadness; joy; and pleasure incorporating electrocardiogram (ECG) signals. As feature extraction methods, this analysis combines four ECG signal based techniques, namely: heart rate variability; empirical mode decomposition; with-in beat analysis; and frequency spectrum analysis. The first three feature extraction methods are well-known ECG based feature extraction techniques mentioned in the literature, and the fourth technique is a novel method proposed in this study. The machine learning procedure of this investigation evaluates the performance of a set of well-known ensemble learners for emotion classification and further improves the classification results using feature selection as a prior step to ensemble model training. Compared to the best performing single biosensor based model in the literature, the developed ensemble learner has the accuracy gain of 10.77%. Furthermore, the developed model outperforms most of the multiple biosensor based emotion recognition models with a significantly higher classification accuracy gain.
机译:最近,基于生物传感器的人类情感识别领域的研究人员已使用不同类型的机器学习模型来识别人类情感。然而,它们中的大多数仍然缺乏结合有限数量的生物传感器以更高的分类精度来识别人类情绪的能力。在机器学习领域,集成学习方法已成功应用于解决需要改进分类精度的不同类型的现实世界机器学习问题。强调这一点,这项研究提出了一种整体学习方法,用于开发一种可以识别人类四种主要情感的机器学习模型,即:愤怒;悲伤喜悦;结合心电图(ECG)信号的愉悦感。作为特征提取方法,此分析结合了四种基于ECG信号的技术,即:心率变异性;经验模式分解节拍分析;和频谱分析。前三种特征提取方法是文献中提到的基于ECG的众所周知的特征提取技术,而第四种技术是本研究中提出的一种新颖方法。这项研究的机器学习过程评估了一组著名的情感学习者在情感分类方面的表现,并使用特征选择作为集成模型训练的第一步来进一步改善了分类结果。与文献中性能最佳的基于单个生物传感器的模型相比,已开发的集成学习器的准确率提高了10.77%。此外,所开发的模型以明显更高的分类精度获得了优于大多数基于多个生物传感器的情绪识别模型。

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