An Improved Subject-Independent Stress Detection Model Applied to Consumer-grade Wearable Devices

Van-Tu Ninh, Manh-Duy Nguyen, Sinéad Smyth, Minh-Triet Tran, G. Healy, Binh T. Nguyen, C. Gurrin
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Abstract

Stress is a complex issue with wide-ranging physical and psychological impacts on human daily performance. Specifically, acute stress detection is becoming a valuable application in contextual human understanding. Two common approaches to training a stress detection model are subject-dependent and subject-independent training methods. Although subject-dependent training methods have proven to be the most accurate approach to build stress detection models, subject-independent models are a more practical and cost-efficient method, as they allow for the deployment of stress level detection and management systems in consumer-grade wearable devices without requiring training data for the end-user. To improve the performance of subject-independent stress detection models, in this paper, we introduce a stress-related bio-signal processing pipeline with a simple neural network architecture using statistical features extracted from multimodal contextual sensing sources including Electrodermal Activity (EDA), Blood Volume Pulse (BVP), and Skin Temperature (ST) captured from a consumer-grade wearable device. Using our proposed model architecture, we compare the accuracy between stress detection models that use measures from each individual signal source, and one model employing the fusion of multiple sensor sources. Extensive experiments on the publicly available WESAD dataset demonstrate that our proposed model outperforms conventional methods as well as providing 1.63% higher mean accuracy score compared to the state-of-the-art model while maintaining a low standard deviation. Our experiments also show that combining features from multiple sources produce more accurate predictions than using only one sensor source individually.
一种用于消费级可穿戴设备的改进的独立于主体的应力检测模型
压力是一个复杂的问题,对人的日常表现有广泛的生理和心理影响。具体来说,急性应激检测正在成为上下文人类理解的一个有价值的应用。训练压力检测模型的两种常用方法是主体依赖训练方法和主体独立训练方法。虽然学科相关的训练方法已被证明是建立压力检测模型最准确的方法,但学科独立模型是一种更实用、更经济的方法,因为它们允许在消费级可穿戴设备中部署压力水平检测和管理系统,而不需要最终用户的训练数据。为了提高与受试者无关的应力检测模型的性能,在本文中,我们引入了一个具有简单神经网络架构的应力相关生物信号处理管道,该管道使用从消费级可穿戴设备捕获的多模态上下文传感源提取的统计特征,包括皮肤电活动(EDA)、血容量脉冲(BVP)和皮肤温度(ST)。使用我们提出的模型架构,我们比较了使用来自每个单独信号源的测量的应力检测模型和使用多个传感器源融合的模型之间的准确性。在公开可用的WESAD数据集上进行的大量实验表明,我们提出的模型优于传统方法,并且与最先进的模型相比,在保持低标准偏差的同时提供了1.63%的平均精度分数。我们的实验还表明,结合多个源的特征比单独使用一个传感器源产生更准确的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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