CoLMDriver: LLM-based Negotiation Benefits Cooperative Autonomous Driving
Abstract
Vehicle-to-vehicle (V2V) cooperative autonomous driving holds great promise for improving safety by addressing the perception and prediction uncertainties inherent in single-agent systems. However, traditional cooperative methods are constrained by rigid collaboration protocols and limited generalization to unseen interactive scenarios. While LLM-based approaches offer generalized reasoning capabilities, their challenges in spatial planning and unstable inference latency hinder their direct application in cooperative driving. To address these limitations, we propose CoLMDriver, the first full-pipeline LLM-based cooperative driving system, enabling effective language-based negotiation and real-time driving control. CoLMDriver features a parallel driving pipeline with two key components: (i) an LLM-based negotiation module under an actor-critic paradigm, which continuously refines cooperation policies through feedback from previous decisions of all vehicles; and (ii) an intention-guided waypoint generator, which translates negotiation outcomes into executable waypoints. Additionally, we introduce InterDrive, a CARLA-based simulation benchmark comprising 10 challenging interactive driving scenarios for evaluating V2V cooperation. Experimental results demonstrate that CoLMDriver significantly outperforms existing approaches, achieving an 11% higher success rate across diverse highly interactive V2V driving scenarios. Code will be released on https://github.com/cxliu0314/CoLMDriver.
Community
Our contributions are:
• We propose CoLMDriver, the first full pipeline LLM-based cooperative driving system, featuring two main
components: an LLM-based negotiator with Actor-Critic feedback, and an intention-guided waypoints planner to
translate negotiation outcomes.
• We introduce InterDrive Benchmark, which includes 10 types of challenging scenarios to enable the evaluation of autonomous driving in handling V2V interactions.
• We conduct comprehensive experiments and validate that CoLMDriver achieves a superior success rate in various V2Vdriving scenarios.
Hope our work can benefit the community.
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