Visuo Motor Control

Visuomotor control studies how visual information guides motor actions, aiming to enable robots and other systems to perform complex tasks based on visual input. Current research heavily focuses on improving the efficiency and robustness of visuomotor control through advanced deep learning architectures like transformers and diffusion models, often incorporating self-supervised learning and techniques like behavior cloning and imitation learning from both expert demonstrations and large unlabeled datasets. These advancements are crucial for creating more adaptable and reliable robots capable of operating in diverse and unpredictable environments, with significant implications for robotics, assistive technologies, and autonomous systems.

Papers