Performance Exploration of RNN Variants for Recognizing Daily Life Stress Levels by Using Multimodal Physiological Signals

Yekta Said Can, Elisabeth André
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Abstract

Enduring stress can have negative impacts on human health and behavior. Widely used wearable devices are promising for assessing, monitoring and potentially alleviating high stress in daily life. Although numerous automatic stress recognition studies have been carried out in the laboratory environment with high accuracy, the performance of daily life studies is still far away from what the literature has in laboratory environments. Since the physiological signals obtained from these devices are time-series data, Recursive Neural Network (RNN) based classifiers promise better results than other machine learning methods. However, the performance of RNN-based classifiers has not been extensively evaluated (i.e., with several variants and different application techniques) for detecting daily life stress yet. They could be combined with CNN architectures, applied to raw data or handcrafted features. In this study, we created different RNN architecture variants and explored their performance for recognizing daily life stress to guide researchers in the field.
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利用多模态生理信号识别日常生活压力水平的RNN变体性能探索
持续的压力会对人的健康和行为产生负面影响。广泛使用的可穿戴设备有望评估、监测和潜在地减轻日常生活中的高压力。尽管在实验室环境下进行了大量高精度的自动应力识别研究,但日常生活研究的表现与文献在实验室环境下的表现仍然相距甚远。由于从这些设备获得的生理信号是时间序列数据,基于递归神经网络(RNN)的分类器比其他机器学习方法有更好的结果。然而,基于rnn的分类器在检测日常生活压力方面的性能尚未得到广泛评估(即使用几种变体和不同的应用技术)。它们可以与CNN架构相结合,应用于原始数据或手工制作的特征。在本研究中,我们创建了不同的RNN架构变体,并探讨了它们在识别日常生活压力方面的表现,以指导该领域的研究人员。
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