Abstract

Determining the stress level of a subject in real time could be of special interest in certain professional activities to allow the monitoring of soldiers, pilots, emergency personnel and other professionals responsible for human lives. Assessment of current mental fitness for executing a task at hand might avoid unnecessary risks. To obtain this knowledge, two physiological measurements were recorded in this work using customized non-invasive wearable instrumentation that measures electrocardiogram (ECG) and thoracic electrical bioimpedance (TEB) signals. The relevant information from each measurement is extracted via evaluation of a reduced set of selected features. These features are primarily obtained from filtered and processed versions of the raw time measurements with calculations of certain statistical and descriptive parameters. Selection of the reduced set of features was performed using genetic algorithms, thus constraining the computational cost of the real-time implementation. Different classification approaches have been studied, but neural networks were chosen for this investigation because they represent a good tradeoff between the intelligence of the solution and computational complexity. Three different application scenarios were considered. In the first scenario, the proposed system is capable of distinguishing among different types of activity with a 21.2% probability error, for activities coded as neutral, emotional, mental and physical. In the second scenario, the proposed solution distinguishes among the three different emotional states of neutral, sadness and disgust, with a probability error of 4.8%. In the third scenario, the system is able to distinguish between low mental load and mental overload with a probability error of 32.3%. The computational cost was calculated, and the solution was implemented in commercially available Android-based smartphones. The results indicate that execution of such a monitoring solution is negligible compared to the nominal computational load of current smartphones.

Highlights

  • The literature includes numerous definitions for “stress”

  • The results are shown as a function of classification error probability versus number of operations per second (Nop ), for different values of Nmax

  • Analysis of the ECG and thoracic electrical bioimpedance (TEB) measurements recorded with sensorized instrumentation can be highly useful for detecting high levels over long periods of time or sudden increases in mental overload, emotional response or physical activity for workers in professions with associated risks, such as fire-fighters, first responders, police and soldiers, among others

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Summary

Introduction

The literature includes numerous definitions for “stress”. This term was coined by Hans Selye [1,2], who defined it as “the non-specific response of the body to any demand for change”. The vest is comfortable, discreet and easy to wear and contains several electrodes that measure the ECG and TEB signals, which are recorded and transmitted in real time via Bluetooth by an ECGZ2 device to the smartphone, which is responsible for processing the data and estimating parameters related to monitoring of the SNS activity, such as the heart rate or the breathing rate. Relevant information from both the ECG and TEB measurements is extracted by evaluation of a reduced set of selected features.

Hardware System Overview
Software System Design
Feature Extraction
Features for ECG Measurement
PARAMETERS
Features for TEB Measurement
Classification
Feature Selection
Description of the Experiments
Results
Analysis 1
Analysis 2
Analysis 3
Conclusions
Full Text
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