Shot Imitation

Shot imitation, particularly one-shot and few-shot imitation learning, aims to enable robots to learn complex tasks from minimal human demonstrations, drastically reducing the data requirements for training robust policies. Current research focuses on developing algorithms that leverage various techniques, including visual attention mechanisms, symbolic representations (like graphs), and contrastive learning, often within a multi-task framework to improve generalization. These advancements are significant for robotics, potentially accelerating the deployment of robots in diverse and dynamic environments by enabling faster and more efficient skill acquisition.

Papers