Entry
Trust calibration through perceptual and predictive information of the external context in autonomous vehicle
Gao, Chen, Yanwei, Luo
Demonstrates that drivers' trust in autonomous vehicles can be calibrated to contextual risk only when an in-vehicle reconfigured panel provides perceptual and predictive information about external driving context, without compromising safety.
·autonomous vehicle ·trust calibration ·situation awareness ·reconfigured panel ·perceptual information
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