Neurophysiological mental fatigue assessment for developing user-centered Artificial Intelligence as a solution for autonomous driving

Front Neurorobot. 2023 Nov 30:17:1240933. doi: 10.3389/fnbot.2023.1240933. eCollection 2023.

Abstract

The human factor plays a key role in the automotive field since most accidents are due to drivers' unsafe and risky behaviors. The industry is now pursuing two main solutions to deal with this concern: in the short term, there is the development of systems monitoring drivers' psychophysical states, such as inattention and fatigue, and in the medium-long term, there is the development of fully autonomous driving. This second solution is promoted by recent technological progress in terms of Artificial Intelligence and sensing systems aimed at making vehicles more and more accurately aware of their "surroundings." However, even with an autonomous vehicle, the driver should be able to take control of the vehicle when needed, especially during the current transition from the lower (SAE < 3) to the highest level (SAE = 5) of autonomous driving. In this scenario, the vehicle has to be aware not only of its "surroundings" but also of the driver's psychophysical state, i.e., a user-centered Artificial Intelligence. The neurophysiological approach is one the most effective in detecting improper mental states. This is particularly true if considering that the more automatic the driving will be, the less available the vehicular data related to the driver's driving style. The present study aimed at employing a holistic approach, considering simultaneously several neurophysiological parameters, in particular, electroencephalographic, electrooculographic, photopletismographic, and electrodermal activity data to assess the driver's mental fatigue in real time and to detect the onset of fatigue increasing. This would ideally work as an information/trigger channel for the vehicle AI. In all, 26 professional drivers were engaged in a 45-min-lasting realistic driving task in simulated conditions, during which the previously listed biosignals were recorded. Behavioral (reaction times) and subjective measures were also collected to validate the experimental design and to support the neurophysiological results discussion. Results showed that the most sensitive and timely parameters were those related to brain activity. To a lesser extent, those related to ocular parameters were also sensitive to the onset of mental fatigue, but with a delayed effect. The other investigated parameters did not significantly change during the experimental session.

Keywords: EEG index; mental fatigue; multimodal assessment; road safety; simulated driving.

Grants and funding

This work was co-funded by the European Commission through the Horizon 2020 project FITDRIVE: Monitoring devices for overall FITness of Drivers (GA no. 953432). The individual grants AI-DRIVE: AI-based multimodal evaluation of car drivers' performance for onboard assistive systems (Avvio alla ricerca 2021) provided by Sapienza University of Rome to GD, The Smelling Brain: discovering the unconscious effect of the odors in industrial contexts (Avvio alla ricerca 2022) provided by Sapienza University of Rome to AV, REMES – Remote tool for emotional states evaluation provided to VR, and HF AUX-Aviation: Advanced tool for Human Factors evaluation for the AUXiliary systems assessment in Aviation provided by Sapienza University of Rome to VR are also acknowledged.