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Hybrid Fusion Approach for Detecting Affects from Multichannel Physiology

机译:杂交融合方法检测多通道生理学的影响

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摘要

Bringing emotional intelligence to computer interfaces is one of the primary goals of affective computing. This goal requires detecting emotions often through multichannel physiology and/or behavioral modalities. While most affective computing studies report high affect detection rate from physiological data, there is no consensus on which methodology in terms of feature selection or classification works best for this type of data. This study presents a framework for fusing physiological features from multiple channels using machine learning techniques to improve the accuracy of affect detection. A hybrid fusion based on weighted majority vote technique for integrating decisions from individual channels and feature level fusion is proposed. The results show that decision fusion can achieve higher classification accuracy for affect detection compared to the individual channels and feature level fusion. However, the highest performance is achieved using the hybrid fusion model.
机译:为计算机接口带来情绪智能是情感计算的主要目标之一。这一目标需要经常通过多通道生理学和/或行为方式来检测情绪。虽然大多数情感计算研究报告了从生理数据的影响率高,但在特征选择或分类方面没有达成共识,这是最适合这种类型的数据。本研究提出了一种框架,用于使用机器学习技术融合来自多个通道的生理特征,以提高影响检测的准确性。提出了一种基于加权多数投票技术的混合融合,用于集成各个信道的决策和特征级融合。结果表明,与各个通道和特征级别融合相比,决策融合可以实现影响检测的更高分类精度。但是,使用混合融合模型实现了最高性能。

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