CarPLAN: Context-Adaptive and Robust Planning with Dynamic Scene Awareness for Autonomous Driving
Junyong Yun, Jungho Kim, ByungHyun Lee, Dongyoung Lee, Sehwan Choi, Seunghyeop Nam, Kichun Jo, Jun Won Choi

TL;DR
CarPLAN is a novel imitation learning framework for autonomous driving that enhances context understanding and adaptive planning through displacement-aware encoding and a mixture of experts, achieving state-of-the-art results in diverse scenarios.
Contribution
We introduce DPE for improved spatial awareness and CMD for dynamic, context-adaptive decision-making, advancing imitation learning for autonomous driving.
Findings
State-of-the-art performance on nuPlan benchmark
Robustness in challenging scenarios like Test14-Hard
Good generalization across different benchmarks
Abstract
Imitation learning (IL) is widely used for motion planning in autonomous driving due to its data efficiency and access to real-world driving data. For safe and robust real-world driving, IL-based planning requires capturing the complex driving contexts inherent in real-world data and enabling context-adaptive decision-making, rather than relying solely on expert trajectory imitation. In this paper, we propose CarPLAN, a novel IL-based motion planning framework that explicitly enhances driving context understanding and enables adaptive planning across diverse traffic scenarios. Our contributions are twofold: We introduce Displacement-Aware Predictive Encoding (DPE) to improve the model's spatial awareness by predicting future displacement vectors between the Autonomous Vehicle (AV) and surrounding scene elements. This allows the planner to account for relational spacing when generating…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Robotic Path Planning Algorithms · Reinforcement Learning in Robotics
