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DriveGPT: Scaling Autoregressive Behavior Models for Driving

Authors :
Huang, Xin
Wolff, Eric M.
Vernaza, Paul
Phan-Minh, Tung
Chen, Hongge
Hayden, David S.
Edmonds, Mark
Pierce, Brian
Chen, Xinxin
Jacob, Pratik Elias
Chen, Xiaobai
Tairbekov, Chingiz
Agarwal, Pratik
Gao, Tianshi
Chai, Yuning
Srinivasa, Siddhartha
Publication Year :
2024

Abstract

We present DriveGPT, a scalable behavior model for autonomous driving. We model driving as a sequential decision making task, and learn a transformer model to predict future agent states as tokens in an autoregressive fashion. We scale up our model parameters and training data by multiple orders of magnitude, enabling us to explore the scaling properties in terms of dataset size, model parameters, and compute. We evaluate DriveGPT across different scales in a planning task, through both quantitative metrics and qualitative examples including closed-loop driving in complex real-world scenarios. In a separate prediction task, DriveGPT outperforms a state-of-the-art baseline and exhibits improved performance by pretraining on a large-scale dataset, further validating the benefits of data scaling.<br />Comment: 14 pages, 16 figures, 9 tables, and 1 video link

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2412.14415
Document Type :
Working Paper