Improving Subject-independent Human Emotion Recognition Using Electrodermal Activity Sensors for Active and Assisted Living

Fadi Al Machot, Mouhannad Ali, S. Ranasinghe, A. Mosa, K. Kyamakya
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引用次数: 13

Abstract

In Active and Assisted Living environments (AAL), one of the major tasks is to make sure that old people or disabled persons do feel well in their environment. Unfortunately, it is still a difficult task to design a learning system or build a machine learning model which can be trained on a group of subjects using physiological sensors and performs well when testing it on other subjects. This paper proposes a dynamic calibration algorithm which presents promising results for subject-independent human emotion recognition. The goal of the calibration module is to calibrate itself with respect to the features of a new subject by finding the most similar subject in the training data. In order to check the overall performance, this approach is tested using the well-known MAHNOB dataset. The results show a promising improvement based on different evaluation metrics, e.g., sensitivity and specificity.
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利用皮肤电活动传感器改善独立于主体的人类情绪识别,用于主动和辅助生活
在积极和辅助生活环境(AAL)中,主要任务之一是确保老年人或残疾人在他们的环境中感觉良好。不幸的是,设计一个学习系统或建立一个机器学习模型仍然是一项艰巨的任务,它可以使用生理传感器在一组受试者上进行训练,并在其他受试者上进行测试时表现良好。本文提出了一种动态校准算法,该算法在独立于主体的人类情感识别中显示出良好的效果。校准模块的目标是通过在训练数据中找到最相似的主题来根据新主题的特征进行校准。为了检查整体性能,使用众所周知的MAHNOB数据集对该方法进行了测试。基于不同的评估指标,如敏感性和特异性,结果显示有希望的改进。
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