Planning with Adaptive World Models for Autonomous Driving
Motion planning is crucial for safe navigation in complex urban environments. Historically, motion planners (MPs) have been evaluated with procedurally-generated simulators like CARLA. However, such synthetic benchmarks do not capture real-world multi-agent interactions. nuPlan, a recently released...
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Zusammenfassung: | Motion planning is crucial for safe navigation in complex urban environments.
Historically, motion planners (MPs) have been evaluated with
procedurally-generated simulators like CARLA. However, such synthetic
benchmarks do not capture real-world multi-agent interactions. nuPlan, a
recently released MP benchmark, addresses this limitation by augmenting
real-world driving logs with closed-loop simulation logic, effectively turning
the fixed dataset into a reactive simulator. We analyze the characteristics of
nuPlan's recorded logs and find that each city has its own unique driving
behaviors, suggesting that robust planners must adapt to different
environments. We learn to model such unique behaviors with BehaviorNet, a graph
convolutional neural network (GCNN) that predicts reactive agent behaviors
using features derived from recently-observed agent histories; intuitively,
some aggressive agents may tailgate lead vehicles, while others may not. To
model such phenomena, BehaviorNet predicts the parameters of an agent's motion
controller rather than directly predicting its spacetime trajectory (as most
forecasters do). Finally, we present AdaptiveDriver, a model-predictive control
(MPC) based planner that unrolls different world models conditioned on
BehaviorNet's predictions. Our extensive experiments demonstrate that
AdaptiveDriver achieves state-of-the-art results on the nuPlan closed-loop
planning benchmark, improving over prior work by 2% on Test-14 Hard R-CLS, and
generalizes even when evaluated on never-before-seen cities. |
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DOI: | 10.48550/arxiv.2406.10714 |