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Causal Composition Diffusion Model for Closed-loop Traffic Generation

About

Simulation is critical for safety evaluation in autonomous driving, particularly in capturing complex interactive behaviors. However, generating realistic and controllable traffic scenarios in long-tail situations remains a significant challenge. Existing generative models suffer from the conflicting objective between user-defined controllability and realism constraints, which is amplified in safety-critical contexts. In this work, we introduce the Causal Compositional Diffusion Model (CCDiff), a structure-guided diffusion framework to address these challenges. We first formulate the learning of controllable and realistic closed-loop simulation as a constrained optimization problem. Then, CCDiff maximizes controllability while adhering to realism by automatically identifying and injecting causal structures directly into the diffusion process, providing structured guidance to enhance both realism and controllability. Through rigorous evaluations on benchmark datasets and in a closed-loop simulator, CCDiff demonstrates substantial gains over state-of-the-art approaches in generating realistic and user-preferred trajectories. Our results show CCDiff's effectiveness in extracting and leveraging causal structures, showing improved closed-loop performance based on key metrics such as collision rate, off-road rate, FDE, and comfort.

Haohong Lin, Xin Huang, Tung Phan-Minh, David S. Hayden, Huan Zhang, Ding Zhao, Siddhartha Srinivasa, Eric M. Wolff, Hongge Chen• 2024

Related benchmarks

TaskDatasetResultRank
Multi-agent Scenario GenerationnuScenes (train)
CS Score0.74
36
Long-horizon traffic scenario generationnuScenes T=4s horizon (closed-loop evaluation)
CS Score0.89
6
Long-horizon traffic scenario generationnuScenes T=5s horizon (closed-loop evaluation)
CS Metric0.78
6
Long-horizon traffic scenario generationnuScenes T=2s horizon (closed-loop evaluation)
CS (Collision Score)0.48
6
Long-horizon traffic scenario generationnuScenes T=3s horizon (closed-loop evaluation)
CS Score67
6
Long-horizon traffic scenario generationnuScenes T=1s horizon closed-loop evaluation
Constraint Score (CS)0.33
6
Trajectory GenerationOver-speed scenarios (test)
SOR0.73
2
Gradient conflict analysisOver-speed scenarios (test)
Neg Grad Cosine Sim0.0129
2
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