NetRoller: Interfacing General and Specialized Models for End-to-End Autonomous Driving
Ren Xin, Hongji Liu, Xiaodong Mei, Wenru Liu, Maosheng Ye, Zhili Chen, Jun Ma

TL;DR
NetRoller is a novel adapter that seamlessly integrates large language models with specialized autonomous driving models, improving safety, perception, and planning performance by addressing asynchronous system challenges.
Contribution
The paper introduces NetRoller, a set of mechanisms for effective interfacing of general and specialized models in autonomous driving, enabling synchronized operation and improved task performance.
Findings
Enhanced safety and human similarity in planning tasks.
Improved detection and mapping accuracy.
Effective integration of GMs and SMs in end-to-end driving.
Abstract
Integrating General Models (GMs) such as Large Language Models (LLMs), with Specialized Models (SMs) in autonomous driving tasks presents a promising approach to mitigating challenges in data diversity and model capacity of existing specialized driving models. However, this integration leads to problems of asynchronous systems, which arise from the distinct characteristics inherent in GMs and SMs. To tackle this challenge, we propose NetRoller, an adapter that incorporates a set of novel mechanisms to facilitate the seamless integration of GMs and specialized driving models. Specifically, our mechanisms for interfacing the asynchronous GMs and SMs are organized into three key stages. NetRoller first harvests semantically rich and computationally efficient representations from the reasoning processes of LLMs using an early stopping mechanism, which preserves critical insights on driving…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Transportation and Mobility Innovations · Traffic Prediction and Management Techniques
