多模态生理信号采集平台的开发及其在小样本情绪识别中的应用

Xiaoqing Jiang, Cen Chen, Yue Zhao, Lihu Wang
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引用次数: 0

摘要

情绪是一种典型的心理过程,具有明显的生理特征。生理信号难以模仿,能反映真实的情绪,因此研究基于生理信号的情绪识别是很有必要的。多模态生理信号是互补的,在情绪识别方面比单模态信号表现更好。由于传统的多模态生理信号采集设备结构复杂或不适合便携式产品开发,本文设计了一种结构简单的多模态生理信号采集平台,用于采集心率、心电和体温。在时域上从多模态生理信号中提取52个特征,采用互信息特征选择(MIFS)方法进行特征选择,得到可识别性较好的子集。基于60个样本对游戏场景中的激发态和非游戏场景中的平静状态进行分类的支持向量机模型进行了训练和测试。当选择19个特征时,情绪识别率最高为80%。实验结果表明,本文构建的多模态生理信号采集平台是有效的,可以基于少量样本在特定场景下识别受试者的情绪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of Multi-modal Physiological Signals Acquisition Platform and Its Application in Emotional Recognition Based on a Small Number of Samples
Emotion is a typical psychological process with obvious physiological characteristics. Physiological signals are difficult to imitate and can reflect real emotions, so the research of emotion recognition based on physiological signals is necessary. Multi-modal physiological signals are complementary, which have better performance than single-modal signals in emotion recognition. Because traditional multi-modal physiological signals acquisition device is complex or not suitable for portable products development, a multi-modal physiological signals acquisition platform with simple structure is designed in this paper to collect heart rate, ECG and body temperature. 52 features are extracted from multi-modal physiological signals in time domain and Mutual Information Feature Selection (MIFS) method is used in feature selection to obtain subset with better recognizability. Support Vector Machine (SVM) model for classifying excited state in game scene and calm state in non-game scene is trained and tested based on 60 samples. The top emotion recognition rate is 80% when 19 features are selected. The experimental results show that the multi-modal physiological signals acquisition platform built in this paper is effective and the emotions of subject can be recognized in specific scenes based on a small number of samples.
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