Department of Smart Systems Technologies, Alpen-Adira University, Klagenfurt 9020, Austria.
Research Center Borstel-Leibniz Center for Medicine and Biosciences, Borstel 23845, Germany.
Sensors (Basel). 2018 Jun 11;18(6):1905. doi: 10.3390/s18061905.
Machine learning approaches for human emotion recognition have recently demonstrated high performance. However, only/mostly for subject-dependent approaches, in a variety of applications like advanced driver assisted systems, smart homes and medical environments. Therefore, now the focus is shifted more towards subject-independent approaches, which are more universal and where the emotion recognition system is trained using a specific group of subjects and then tested on totally new persons and thereby possibly while using other sensors of same physiological signals in order to recognize their emotions. In this paper, we explore a novel robust subject-independent human emotion recognition system, which consists of two major models. The first one is an automatic feature calibration model and the second one is a classification model based on Cellular Neural Networks (CNN). The proposed system produces state-of-the-art results with an accuracy rate between 80% and 89% when using the same elicitation materials and physiological sensors brands for both training and testing and an accuracy rate of 71.05% when the elicitation materials and physiological sensors brands used in training are different from those used in training. Here, the following physiological signals are involved: ECG (Electrocardiogram), EDA (Electrodermal activity) and ST (Skin-Temperature).
机器学习方法在人类情感识别方面最近表现出了很高的性能。然而,这些方法主要是针对特定对象的,在高级驾驶辅助系统、智能家居和医疗环境等各种应用中都有涉及。因此,现在的重点更多地转向了独立于对象的方法,这些方法更加通用,情感识别系统使用特定的一组对象进行训练,然后在全新的对象上进行测试,同时可能会使用其他相同生理信号的传感器来识别他们的情绪。在本文中,我们探索了一种新颖的、稳健的独立于对象的人类情感识别系统,该系统由两个主要模型组成。第一个是自动特征校准模型,第二个是基于细胞神经网络 (CNN) 的分类模型。该系统在使用相同的诱发材料和生理传感器品牌进行训练和测试时,准确率在 80%到 89%之间,而在使用训练中使用的诱发材料和生理传感器品牌与测试中使用的不同时,准确率为 71.05%。这里涉及到以下生理信号:心电图 (ECG)、皮肤电活动 (EDA) 和皮肤温度 (ST)。