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A Diffusion-Model of Joint Interactive Navigation

Authors :
Niedoba, Matthew
Lavington, Jonathan Wilder
Liu, Yunpeng
Lioutas, Vasileios
Sefas, Justice
Liang, Xiaoxuan
Green, Dylan
Dabiri, Setareh
Zwartsenberg, Berend
Scibior, Adam
Wood, Frank
Publication Year :
2023

Abstract

Simulation of autonomous vehicle systems requires that simulated traffic participants exhibit diverse and realistic behaviors. The use of prerecorded real-world traffic scenarios in simulation ensures realism but the rarity of safety critical events makes large scale collection of driving scenarios expensive. In this paper, we present DJINN - a diffusion based method of generating traffic scenarios. Our approach jointly diffuses the trajectories of all agents, conditioned on a flexible set of state observations from the past, present, or future. On popular trajectory forecasting datasets, we report state of the art performance on joint trajectory metrics. In addition, we demonstrate how DJINN flexibly enables direct test-time sampling from a variety of valuable conditional distributions including goal-based sampling, behavior-class sampling, and scenario editing.<br />Comment: 10 pages, 4 figures. Accepted to NeurIPS 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2309.12508
Document Type :
Working Paper