Abstract

In this paper, we address the problem of possible stress conditions arising in car drivers, thus affecting their driving performance. We apply various Machine Learning (ML) algorithms to analyse the stress of subjects while driving in an urban area in two different situations: one with cars, pedestrians and traffic along the course, and the other characterized by the complete absence of any of these possible stress-inducing factors. To evaluate the presence of a stress condition we use two Skin Potential Response (SPR) signals, recorded from each hand of the test subjects, and process them through a Motion Artifact (MA) removal algorithm which reduces the artifacts that might be introduced by the hand movements. We then compute some statistical features starting from the cleaned SPR signal. A binary classification ML algorithm is then fed with these features, giving as an output a label that indicates if a time interval belongs to a stress condition or not. Tests are carried out in a laboratory at the University of Udine, where a car driving simulator with a motorized motion platform has been prearranged. We show that the use of one single SPR signal, along with the application of ML algorithms, enables the detection of possible stress conditions while the subjects are driving, in the traffic and no traffic situations. As expected, we observe that the test individuals are less stressed in the situation without traffic, confirming the effectiveness of the proposed slightly invasive system for detection of stress in drivers.

Highlights

  • Paying attention to drivers’ mental wellbeing is crucial to improve safety in road traffic

  • In this paper, we address the problem of possible stress conditions arising in car drivers, affecting their driving performance

  • One of the main contributions of this paper is the analysis and comparison of the performance results of different Machine Learning (ML) models, which we demonstrated to be valuable in detecting stress episodes in previous experiments, but considering the stress caused by urban traffic

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Summary

Introduction

Paying attention to drivers’ mental wellbeing is crucial to improve safety in road traffic. Stress can lead drivers to engage in risky behaviours [1] and car accidents [2]. A danger situation occurs whenever stress is caused by the driving activity itself as happens to professional [3] and regular drivers [4], or by personal issues as highlighted in [5] in case of economic reasons, or any other kind of reason as described in [6]. A Hidden Markov Model (HMM) system to assess the probability of assuming certain behaviours considering the current emotion is developed in [7]. In [8], a survey describing the methods to recognize emotions in drivers is provided. The second one relies on physical manifestations of stress: data describing human behaviour, for example, could be collected by the Global Positioning System [12] and facial expressions [13]

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