4.4 Article

Real-Time Estimation of Drivers' Trust in Automated Driving Systems

期刊

INTERNATIONAL JOURNAL OF SOCIAL ROBOTICS
卷 13, 期 8, 页码 1911-1927

出版社

SPRINGER
DOI: 10.1007/s12369-020-00694-1

关键词

Trust; Trust models; Human-robot interaction (HRI); Automated driving systems; Driving simulation

类别

资金

  1. National Science Foundation
  2. Brazilian Army's Department of Science and Technology
  3. Automotive Research Center (ARC) at the University of Michigan, through the U.S. Army CCDC/GVSC [DoD-DoA W56HZV14-2-0001]

向作者/读者索取更多资源

Issues of trust miscalibration between drivers and self-driving vehicles can be addressed through dynamic modeling and estimation of trust levels using various sensed behaviors, with a proposed framework integrating eye-tracking signals, system usage time, and performance on non-driving tasks. Results from a study with simulated automated driving systems show the success of the approach in computing trust estimates, encouraging the use of strategies for modeling and estimating trust in automated driving systems to design trust-aware systems.
Trust miscalibration issues, represented by undertrust and overtrust, hinder the interaction between drivers and self-driving vehicles. A modern challenge for automotive engineers is to avoid these trust miscalibration issues through the development of techniques for measuring drivers' trust in the automated driving system during real-time applications execution. One possible approach for measuring trust is through modeling its dynamics and subsequently applying classical state estimation methods. This paper proposes a framework for modeling the dynamics of drivers' trust in automated driving systems and also for estimating these varying trust levels. The estimation method integrates sensed behaviors (from the driver) through a Kalman filter-based approach. The sensed behaviors include eye-tracking signals, the usage time of the system, and drivers' performance on a non-driving-related task. We conducted a study (n=80) with a simulated SAE level 3 automated driving system, and analyzed the factors that impacted drivers' trust in the system. Data from the user study were also used for the identification of the trust model parameters. Results show that the proposed approach was successful in computing trust estimates over successive interactions between the driver and the automated driving system. These results encourage the use of strategies for modeling and estimating trust in automated driving systems. Such trust measurement technique paves a path for the design of trust-aware automated driving systems capable of changing their behaviors to control drivers' trust levels to mitigate both undertrust and overtrust.

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