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Model Adaptation and Personalization for Physiological Stress Detection

机译:生理压力检测的模型自适应和个性化

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Stress and accompanying physiological responses can occur when everyday emotional, mental and physical challenges exceed one's ability to cope. A long-term exposure to stressful situations can have negative health consequences, such as increased risk of cardiovascular diseases and immune system disorder. It is also shown to adversely affect productivity, well-being, and self-confidence, which can lead to social and economic inequality. Hence, a timely stress recognition can contribute to better strategies for its management and prevention in the future. Stress can be detected from multimodal physiological signals (e.g. skin conductance and heart rate) using well-trained models. However, these models need to be adapted to a new target domain and personalized for each test subject. In this paper, we propose a deep reconstruction classification network and multi-task learning (MTL) for domain adaption and personalization of stress recognition models. The domain adaption is achieved via a hybrid model consisting of temporal convolutional and recurrent layers that perform shared feature extraction through supervised source label predictions and unsupervised target data reconstruction. Furthermore, MTL based neural network approach with hard parameter sharing of mutual representation and task-specific layers is utilized to acquire personalized models. The proposed methods are tested on multimodal physiological time-series data collected during driving tasks, in both real-world and driving simulator settings.
机译:当日常的情感,心理和身体挑战超出了自己的承受能力时,就会出现压力和伴随的生理反应。长期处于压力状态会给健康带来负面影响,例如增加患心血管疾病和免疫系统疾病的风险。它还显示出对生产率,幸福感和自信心的不利影响,这可能导致社会和经济不平等。因此,及时的压力识别可以为将来的管理和预防提供更好的策略。可以使用训练有素的模型从多峰生理信号(例如,皮肤电导和心率)中检测压力。但是,这些模型需要适应新的目标领域,并针对每个测试对象进行个性化设置。在本文中,我们提出了一种深度重构分类网络和多任务学习(MTL),用于压力识别模型的领域自适应和个性化。通过由时间卷积和递归层组成的混合模型实现域自适应,该混合模型通过有监督的源标签预测和无监督的目标数据重建执行共享特征提取。此外,基于MTL的神经网络方法具有相互表示和特定任务层的硬参数共享,可用于获取个性化模型。在实际和驾驶模拟器设置下,对在驾驶任务期间收集的多模式生理时间序列数据进行了测试,对所提出的方法进行了测试。

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