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📄 Abstract - Learning Vision-Driven Reactive Soccer Skills for Humanoid Robots

Humanoid soccer poses a representative challenge for embodied intelligence, requiring robots to operate within a tightly coupled perception-action loop. However, existing systems typically rely on decoupled modules, resulting in delayed responses and incoherent behaviors in dynamic environments, while real-world perceptual limitations further exacerbate these issues. In this work, we present a unified reinforcement learning-based controller that enables humanoid robots to acquire reactive soccer skills through the direct integration of visual perception and motion control. Our approach extends Adversarial Motion Priors to perceptual settings in real-world dynamic environments, bridging motion imitation and visually grounded dynamic control. We introduce an encoder-decoder architecture combined with a virtual perception system that models real-world visual characteristics, allowing the policy to recover privileged states from imperfect observations and establish active coordination between perception and action. The resulting controller demonstrates strong reactivity, consistently executing coherent and robust soccer behaviors across various scenarios, including real RoboCup matches.

顶级标签: robotics agents reinforcement learning
详细标签: humanoid robots vision-driven control soccer skills motion priors perception-action loop 或 搜索:

📄 论文总结

人形机器人视觉驱动反应式足球技能学习 / Learning Vision-Driven Reactive Soccer Skills for Humanoid Robots


1️⃣ 一句话总结

这项研究开发了一种将视觉感知与运动控制直接结合的统一强化学习方法,使人形机器人能够在动态环境中实时做出连贯而稳健的足球动作响应。


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