DriveVLM-RL: Neuroscience-Inspired Reinforcement Learning with Vision-Language Models for Safe and Deployable Autonomous Driving
Zilin Huang, Zihao Sheng, Zhengyang Wan, Yansong Qu, Junwei You, Sicong Jiang, Sikai Chen

TL;DR
DriveVLM-RL introduces a neuroscience-inspired framework integrating vision-language models into reinforcement learning for safer, more reliable autonomous driving, achieving better collision avoidance and generalization without real-time inference issues.
Contribution
The paper presents a novel dual-pathway architecture that incorporates VLMs into RL for autonomous driving, ensuring real-time deployment by decoupling inference during training.
Findings
Enhanced collision avoidance in CARLA simulations
Improved task success rates across diverse scenarios
Robustness without explicit collision penalties
Abstract
Ensuring safe decision-making in autonomous vehicles remains a fundamental challenge despite rapid advances in end-to-end learning approaches. Traditional reinforcement learning (RL) methods rely on manually engineered rewards or sparse collision signals, which fail to capture the rich contextual understanding required for safe driving and make unsafe exploration unavoidable in real-world settings. Recent vision-language models (VLMs) offer promising semantic understanding capabilities; however, their high inference latency and susceptibility to hallucination hinder direct application to real-time vehicle control. To address these limitations, this paper proposes DriveVLM-RL, a neuroscience-inspired framework that integrates VLMs into RL through a dual-pathway architecture for safe and deployable autonomous driving. The framework decomposes semantic reward learning into a Static Pathway…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Adversarial Robustness in Machine Learning · Reinforcement Learning in Robotics
