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Vision-Based Policy Learning for High-Speed Autonomous Racing: A Two-Phase Learning Paradigm

April 17, 2026 by Haoran Xu Xianwei Chen Yilin Lang Qinyuan Ren College of Control Science and Engineering, Zhejiang University, Hangzhou, Zhejiang, China

Abstract:

Robotic navigation in complex environments remains a critical research challenge. Traditional navigation methods focus on optimal trajectory generation within fixed free workspace, therefore struggling in environments lacking viable paths to the goal, such as disaster zones or cluttered warehouses. To address this problem, we propose AINav, an adaptive interactive navigation approach that proactively interacts with environments to create feasible paths to achieve originally unreachable goals. Specifically, we present a primitive skill tree for task planning with large language models (LLMs), facilitating effective reasoning to determine interaction objects and sequences. To ensure robust subtask execution, we adopt reinforcement learning (RL) to pretrain a comprehensive skill library containing versatile locomotion and interaction behaviors for motion planning. Furthermore, we introduce an adaptive replanning approach featuring two LLM-based modules: an advisor serving as a flexible replanning trigger and an arborist for autonomous plan adjustment. Integrated with the tree structure, the replanning mechanism allows for convenient node addition and pruning, enabling rapid plan adaptation in a priori unknown environments. Comprehensive simulations and experiments have demonstrated AINav’s effectiveness and adaptivity in diverse scenarios. The supplementary video is available at https://youtu.be/CjXm5KFx9AI.

For more about this article see link below.

https://ieeexplore.ieee.org/document/11316840

For the open access PDF link of this article please click here.

Filed Under: Features Tagged With: Automobiles, Autonomous vehicles, Computer vision, Games, Motion planning, Noise measurement, Planning, Propioception, Tracking, Training, Trajectory, Visualization

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As the flagship magazine of the IEEE Robotics and Automation Society, IEEE Robotics and Automation Magazine (RAM) covers the latest developments in robotics and automation. Its scope ranges from cutting-edge technological advances to emerging social, economic, ethical, and policy issues shaping the field.  Published quarterly (March, June, September, and December), RAM features both high-impact original research articles written in an engaging and accessible style, as well as reviews, columns and opinion pieces addressing a wide range of timely topics.

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IEEE Robotics & Automation Magazine  publishes four issues per year: March, June, September and December.