CVLGROApr 15, 2025

A Simulator Dataset to Support the Study of Impaired Driving

arXiv:2507.02867v12 citationsh-index: 16
Originality Synthesis-oriented
AI Analysis

This dataset addresses the societal issue of impaired driving for researchers, but it is incremental as it provides a new resource rather than a novel method.

The paper tackles the problem of impaired driving by presenting a driving dataset that supports the study of alcohol intoxication and cognitive distraction, including 23.7 hours of simulated urban driving with 52 human subjects under various impaired conditions.

Despite recent advances in automated driving technology, impaired driving continues to incur a high cost to society. In this paper, we present a driving dataset designed to support the study of two common forms of driver impairment: alcohol intoxication and cognitive distraction. Our dataset spans 23.7 hours of simulated urban driving, with 52 human subjects under normal and impaired conditions, and includes both vehicle data (ground truth perception, vehicle pose, controls) and driver-facing data (gaze, audio, surveys). It supports analysis of changes in driver behavior due to alcohol intoxication (0.10\% blood alcohol content), two forms of cognitive distraction (audio n-back and sentence parsing tasks), and combinations thereof, as well as responses to a set of eight controlled road hazards, such as vehicle cut-ins. The dataset will be made available at https://toyotaresearchinstitute.github.io/IDD/.

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