Real-time Trust Prediction in Conditionally Automated Driving Using Physiological Measures
December 01, 2022 Β· Declared Dead Β· π IEEE transactions on intelligent transportation systems (Print)
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Authors
Jackie Ayoub, Lilit Avetisian, X. Jessie Yang, Feng Zhou
arXiv ID
2212.00607
Category
cs.HC: Human-Computer Interaction
Citations
42
Venue
IEEE transactions on intelligent transportation systems (Print)
Last Checked
3 months ago
Abstract
Trust calibration presents a main challenge during the interaction between drivers and automated vehicles (AVs). In order to calibrate trust, it is important to measure drivers' trust in real time. One possible method is through modeling its dynamic changes using machine learning models and physiological measures. In this paper, we proposed a technique based on machine learning models to predict drivers' dynamic trust in conditional AVs using physiological measurements in real time. We conducted the study in a driving simulator where participants were requested to take over control from automated driving in three conditions that included a control condition, a false alarm condition, a miss condition with eight takeover requests (TORs) in different scenarios. Drivers' physiological measures were recorded during the experiment, including galvanic skin response (GSR), heart rate (HR) indices, and eye-tracking metrics. Using five machine learning models, we found that eXtreme Gradient Boosting (XGBoost) performed the best and was able to predict drivers' trust in real time with an f1-score of 89.1%. Our findings provide good implications on how to design an in-vehicle trust monitoring system to calibrate drivers' trust to facilitate interaction between the driver and the AV in real time.
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