BATON: A Multimodal Benchmark for Bidirectional Automation Transition Observation in Naturalistic Driving
Yuhang Wang, Yiyao Xu, Chaoyun Yang, Lingyao Li, Jingran Sun, Hao Zhou

TL;DR
BATON introduces a comprehensive multimodal dataset capturing real-world driving transitions, enabling improved prediction of driver control handovers and takeovers for safer, more intuitive automation systems.
Contribution
This work presents BATON, a large-scale naturalistic driving dataset with synchronized multimodal data, and benchmarks for understanding and predicting control transitions in autonomous driving.
Findings
Visual input alone is insufficient for reliable transition prediction.
Combining CAN signals and route context improves prediction accuracy.
Takeover events develop gradually and benefit from longer prediction horizons.
Abstract
Existing driving automation (DA) systems on production vehicles rely on human drivers to decide when to engage DA while requiring them to remain continuously attentive and ready to intervene. This design demands substantial situational judgment and imposes significant cognitive load, leading to steep learning curves, suboptimal user experience, and safety risks from both over-reliance and delayed takeover. Predicting when drivers hand over control to DA and when they take it back is therefore critical for designing proactive, context-aware HMI, yet existing datasets rarely capture the multimodal context, including road scene, driver state, vehicle dynamics, and route environment. To fill this gap, we introduce BATON, a large-scale naturalistic dataset capturing real-world DA usage across 127 drivers, and 136.6 hours of driving. The dataset synchronizes front-view video, in-cabin video,…
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