Robot Policy

Robot policy research focuses on developing robust and adaptable control algorithms enabling robots to perform complex tasks in diverse and unpredictable environments. Current efforts concentrate on improving policy generalization through techniques like large-scale reinforcement learning fine-tuning, leveraging pre-trained vision-language models for improved reasoning and failure detection, and incorporating human preferences and feedback for personalization. These advancements are crucial for deploying reliable and efficient robots in real-world applications, ranging from assistive robotics to industrial automation.

Papers