LGAINov 12, 2025

Out-of-Distribution Generalization with a SPARC: Racing 100 Unseen Vehicles with a Single Policy

arXiv:2511.09737v12 citationsh-index: 18
Originality Incremental advance
AI Analysis

This addresses the problem of robust control in unseen environments for robotics, though it appears incremental by simplifying existing approaches.

The paper tackles the challenge of out-of-distribution generalization in contextual reinforcement learning by introducing SPARC, a single-phase adaptation method that simplifies training and achieves reliable performance in racing and wind-perturbed environments.

Generalization to unseen environments is a significant challenge in the field of robotics and control. In this work, we focus on contextual reinforcement learning, where agents act within environments with varying contexts, such as self-driving cars or quadrupedal robots that need to operate in different terrains or weather conditions than they were trained for. We tackle the critical task of generalizing to out-of-distribution (OOD) settings, without access to explicit context information at test time. Recent work has addressed this problem by training a context encoder and a history adaptation module in separate stages. While promising, this two-phase approach is cumbersome to implement and train. We simplify the methodology and introduce SPARC: single-phase adaptation for robust control. We test SPARC on varying contexts within the high-fidelity racing simulator Gran Turismo 7 and wind-perturbed MuJoCo environments, and find that it achieves reliable and robust OOD generalization.

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