An Improved Subject-Independent Stress Detection Model Applied to
Consumer-grade Wearable Devices
- URL: http://arxiv.org/abs/2203.09663v1
- Date: Fri, 18 Mar 2022 00:19:42 GMT
- Title: An Improved Subject-Independent Stress Detection Model Applied to
Consumer-grade Wearable Devices
- Authors: Van-Tu Ninh and Manh-Duy Nguyen and Sin\'ead Smyth and Minh-Triet Tran
and Graham Healy and Binh T. Nguyen and Cathal Gurrin
- Abstract summary: Two common approaches to training a stress detection model are subject-dependent and subject-independent training methods.
We introduce a stress-related bio-signal processing pipeline with a simple neural network architecture to improve the performance of subject-independent models.
Our proposed model outperforms conventional methods as well as providing 1.63% higher mean accuracy score compared to the state-of-the-art model.
- Score: 7.714433991463217
- License: http://creativecommons.org/licenses/by/4.0/
- 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.
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