EvoPSF: Online Evolution of Autonomous Driving Models via Planning-State Feedback
Jiayue Jin, Lang Qian, Jingyu Zhang, Chuanyu Ju, and Liang Song

TL;DR
EvoPSF introduces an online evolution framework for autonomous driving that adaptively updates models during deployment by leveraging planning uncertainty and attention mechanisms, enhancing robustness and planning accuracy in unseen environments.
Contribution
The paper presents a novel online evolution method for autonomous driving models that uses planning-state feedback and attention to perform targeted self-supervised updates during deployment.
Findings
Improves planning performance in cross-region tests.
Enhances model robustness against environmental changes.
Achieves more accurate and stable planning behaviors.
Abstract
Recent years have witnessed remarkable progress in autonomous driving, with systems evolving from modular pipelines to end-to-end architectures. However, most existing methods are trained offline and lack mechanisms to adapt to new environments during deployment. As a result, their generalization ability diminishes when faced with unseen variations in real-world driving scenarios. In this paper, we break away from the conventional "train once, deploy forever" paradigm and propose EvoPSF, a novel online Evolution framework for autonomous driving based on Planning-State Feedback. We argue that planning failures are primarily caused by inaccurate object-level motion predictions, and such failures are often reflected in the form of increased planner uncertainty. To address this, we treat planner uncertainty as a trigger for online evolution, using it as a diagnostic signal to initiate…
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