Physiological-based emotion recognition with IRS model

C. Li, Zhiyong Feng, Chao Xu
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引用次数: 8

Abstract

A major challenge in physiology-based emotion recognition is to establish an effective emotion recognizer for multi-users in the user-independent scenario. The recognition result is not satisfied because it ignores the difference in individual response pattern, which can be attributed to IRS (Individual Response Specificity) and SRS(Stimuli Response Specificity) in psychophysiology. To improve the performance of emotion recognition, this paper proposes a Group-Based IRS model by adaptively matching a suitable recognizer in accordance with user's IRS level. Specifically, the users are put into distinct groups by using cluster analysis techniques, where users within the same group have similar IRS level than other groups. Then physiological data of users from each group is utilized to build the corresponding emotion recognizers. After categorizing a new user into one group according to his IRS level, the new user's emotion state is predicted by the corresponding emotion recognizer. To validate our model, the affective physiological data was collected from 11 subjects in four induced emotions(neutral, sadness, fear and pleasure), three-channel bio-sensors were used to measure users electrocardiogram (ECG), galvanic skin response (GSR) and photo plethysmography (PPG). The results show that the recognition precision in Group-based IRS model is higher than general model.
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基于IRS模型的生理情感识别
基于生理的情感识别面临的一个主要挑战是如何在独立于用户的场景下为多用户建立有效的情感识别器。识别结果并不令人满意,因为它忽略了个体反应模式的差异,这种差异可归因于心理生理学上的个体反应特异性(IRS)和刺激反应特异性(SRS)。为了提高情绪识别的性能,本文提出了一种基于群体的情绪识别模型,该模型根据用户的情绪识别水平自适应匹配合适的识别器。具体来说,通过使用聚类分析技术将用户划分为不同的组,其中同一组内的用户具有与其他组相似的IRS水平。然后利用每组用户的生理数据构建相应的情感识别器。根据新用户的IRS水平将其分类为一组,然后由相应的情绪识别器预测新用户的情绪状态。为了验证我们的模型,我们收集了11名被试在4种诱导情绪(中性、悲伤、恐惧和快乐)下的情感生理数据,并使用三通道生物传感器测量了用户的心电图(ECG)、皮肤电反应(GSR)和光电体积脉搏波(PPG)。结果表明,基于分组的IRS模型的识别精度高于一般模型。
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