Abstract

Human stress is intricately linked with mental processes such as decision making. Public protection practitioners, including Law Enforcement Agents (LEAs), are forced to make difficult decisions during high-pressure operations, under strenuous circumstances. In this respect, systems and applications that assist such practitioners to take decisions, are increasingly incorporating user stress level information for their development, adaptation, and evaluation. To that end, our goal is to accurately detect and classify the level of acute, short-term stress, in real time, for the development of personalized, context-aware solutions for LEAs. Deep Neural Networks (DNNs), and in particular Convolutional Neural Networks (CNNs), have been gaining traction in the field of stress analysis, exhibiting promising results. Furthermore, the electrocardiogram (ECG) signals, have also been widely adopted for estimating levels of stress. In this work, we propose two CNN architectures for the stress detection and 3-level (low, moderate, high) stress classification tasks, using ultra short-term raw ECG signals (3 s). One architecture is simple and with a low memory footprint, suitable for running in wearable edge-computing nodes, and the other is able to learn more complex features, having more trainable parameters. The models were trained on the two publicly available stress classification datasets, after applying pre-processing techniques, such as data pruning, down-sampling, and data augmentation, using a sliding window approach. After hyperparameter tuning, using 4-fold cross-validation, the evaluation on the test set demonstrated state-of-the-art accuracy both on the 3- and 2-level stress classification task using the DriveDB dataset, reporting an accuracy of 83.55% and 98.77% respectively.

Highlights

  • Researchers and developers of personalised, context-aware applications for public protection practitioners are increasingly acknowledging the need for leveraging user stress level information, to cater for the varying requirements depending on its level

  • DARLENE, a European Union funded project [1] aims at providing technologies that enable law enforcement agents (LEAs) and in general first responders to make more informed and rapid decisions, especially in situations where time is of the essence

  • Our models were trained and evaluated on the pre-processed datasets originating from the DriveDB and Arachnophobia datasets

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Summary

Introduction

Researchers and developers of personalised, context-aware applications for public protection practitioners are increasingly acknowledging the need for leveraging user stress level information, to cater for the varying requirements depending on its level. In this respect, DARLENE, a European Union funded project [1] aims at providing technologies that enable law enforcement agents (LEAs) and in general first responders to make more informed and rapid decisions, especially in situations where time is of the essence. Provided that LEAs’ performance and awareness of the situation are directly influenced by their stress level, a system is being developed that takes this into account by providing them with contextual, real-time information, specific to their mission, through worn Augmented Reality glasses. A supporting sub-system, deployable to edge devices, is being implemented, which classifies the level of acute, short-term stress in real time

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