Research Center Borstel-Leibniz Lung Center, 23845 Borstel, Germany.
Faculty of Mechanical and Electrical Engineering, University of Damascus, Damascus, Syria.
Sensors (Basel). 2019 Apr 7;19(7):1659. doi: 10.3390/s19071659.
One of the main objectives of Active and Assisted Living (AAL) environments is to ensure that elderly and/or disabled people perform/live well in their immediate environments; this can be monitored by among others the recognition of emotions based on non-highly intrusive sensors such as Electrodermal Activity (EDA) sensors. However, designing a learning system or building a machine-learning model to recognize human emotions while training the system on a specific group of persons and testing the system on a totally a new group of persons is still a serious challenge in the field, as it is possible that the second testing group of persons may have different emotion patterns. Accordingly, the purpose of this paper is to contribute to the field of human emotion recognition by proposing a Convolutional Neural Network (CNN) architecture which ensures promising robustness-related results for both subject-dependent and subject-independent human emotion recognition. The CNN model has been trained using a grid search technique which is a model hyperparameter optimization technique to fine-tune the parameters of the proposed CNN architecture. The overall concept's performance is validated and stress-tested by using MAHNOB and DEAP datasets. The results demonstrate a promising robustness improvement regarding various evaluation metrics. We could increase the accuracy for subject-independent classification to 78% and 82% for MAHNOB and DEAP respectively and to 81% and 85% subject-dependent classification for MAHNOB and DEAP respectively (4 classes/labels). The work shows clearly that while using solely the non-intrusive EDA sensors a robust classification of human emotion is possible even without involving additional/other physiological signals.
主动和辅助生活(AAL)环境的主要目标之一是确保老年人和/或残疾人在其直接环境中表现良好/生活;这可以通过识别基于非高度侵入性传感器(如皮肤电活动(EDA)传感器)的情绪来监测。然而,在特定人群上训练系统并在全新人群上测试系统的情况下,设计学习系统或构建机器学习模型来识别人类情绪仍然是该领域的一个严峻挑战,因为第二组测试人群可能具有不同的情绪模式。因此,本文旨在通过提出一种卷积神经网络(CNN)架构为人类情绪识别领域做出贡献,该架构确保在主体相关和主体无关的人类情绪识别方面具有有前景的稳健性相关结果。使用网格搜索技术对 CNN 模型进行了训练,网格搜索技术是一种模型超参数优化技术,用于微调所提出的 CNN 架构的参数。通过使用 MAHNOB 和 DEAP 数据集对整体概念的性能进行验证和压力测试。结果表明,在各种评估指标方面,稳健性得到了显著提高。我们可以将 MAHNOB 和 DEAP 上的主体无关分类准确率分别提高到 78%和 82%,主体相关分类准确率分别提高到 81%和 85%(4 类/标签)。该工作清楚地表明,即使不涉及额外/其他生理信号,仅使用非侵入性 EDA 传感器也可以实现人类情绪的稳健分类。