AI RESEARCH
Self-Refining Agentic Reinforcement Learning for Vision-Conditioned UAV Navigation
arXiv CS.AI
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ArXi:2606.03963v1 Announce Type: cross Deep reinforcement learning has shown strong potential for enabling autonomous robots to learn complex navigational tasks. However, its practical use still depends heavily on human designed reward functions and repeated manual fine tuning, which is time consuming and does not guarantee high success in the desired task. This paper presents AgenticRL, agent guided reinforcement learning framework that increases autonomy in reward design, policy refinement, and real world deployment for unmanned aerial vehicles (UAV) navigation tasks.