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📄 Abstract
Abstract: Safe large-scale coordination of multiple cooperative connected autonomous
vehicles (CAVs) hinges on communication that is both efficient and
interpretable. Existing approaches either rely on transmitting high-bandwidth
raw sensor data streams or neglect perception and planning uncertainties
inherent in shared data, resulting in systems that are neither scalable nor
safe. To address these limitations, we propose Uncertainty-Guided Natural
Language Cooperative Autonomous Planning (UNCAP), a vision-language model-based
planning approach that enables CAVs to communicate via lightweight natural
language messages while explicitly accounting for perception uncertainty in
decision-making. UNCAP features a two-stage communication protocol: (i) an ego
CAV first identifies the subset of vehicles most relevant for information
exchange, and (ii) the selected CAVs then transmit messages that quantitatively
express their perception uncertainty. By selectively fusing messages that
maximize mutual information, this strategy allows the ego vehicle to integrate
only the most relevant signals into its decision-making, improving both the
scalability and reliability of cooperative planning. Experiments across diverse
driving scenarios show a 63% reduction in communication bandwidth with a 31%
increase in driving safety score, a 61% reduction in decision uncertainty, and
a four-fold increase in collision distance margin during near-miss events.
Project website: https://uncap-project.github.io/
Authors (10)
Neel P. Bhatt
Po-han Li
Kushagra Gupta
Rohan Siva
Daniel Milan
Alexander T. Hogue
+4 more
Submitted
October 14, 2025
Key Contributions
UNCAP proposes a novel vision-language model-based planning approach for cooperative autonomous vehicles that uses natural language for communication and explicitly accounts for perception uncertainty. It introduces a two-stage communication protocol to identify relevant vehicles and transmit uncertainty-quantified messages, addressing the limitations of high-bandwidth data transmission and neglect of uncertainties in existing systems.
Business Value
Enhances the safety and efficiency of autonomous vehicle fleets by enabling reliable communication and coordination, even in complex scenarios with uncertain perceptions. This is crucial for the widespread adoption of autonomous transportation.