Graph Attention Neural Networks are leveraged to build efficient and accurate digital twins that can simultaneously estimate lane-wise traffic waveforms for vehicles approaching and exiting any intersection, while accounting for various influential factors such as signal timing, driving behavior, and turning-movement counts.
The proposed Versatile Behavior Diffusion (VBD) model leverages diffusion-based generative modeling to efficiently generate realistic and controllable traffic scenarios by integrating joint multi-agent diffusion policy and marginal multi-modal behavior prediction.
LitSim proposes a conflict-aware policy for long-term interactive traffic simulation to enhance realism and reactivity.
Addressing the covariate shift problem in multi-agent imitation learning for realistic traffic simulation.
LitSim proposes a conflict-aware policy for long-term interactive traffic simulation to enhance realism and reactivity.
LitSim proposes a long-term interactive simulation approach that maximizes realism while avoiding unrealistic collisions by utilizing conflict-aware policies. The method outperforms existing approaches in terms of realism and reactivity.