In this work, we introduce a novel method to learn everyday-like multi-stage tasks from a single human demonstration, without requiring any prior object knowledge. Inspired by the recent Coarse-to-Fine Imitation Learning method, we model imitation learning as a learned object reaching phase followed by an open-loop replay of the demonstrator's actions. We build upon this for multi-stage tasks where, following the human demonstration, the robot can autonomously collect image data for the entire multi-stage task, by reaching the next object in the sequence and then replaying the demonstration, and then repeating in a loop for all stages of the task. We evaluate with real-world experiments on a set of everyday-like multi-stage tasks, which we show that our method can solve from a single demonstration. Videos and supplementary material can be found at https://www.robot-learning.uk/self-replay.
翻译:在这项工作中,我们引入了一种新颖的方法,从一个人类的演示中学习日常相似的多阶段任务,而不需要任何先前的物体知识。在近期的“粗体到纤维的模拟学习”方法的启发下,我们将模仿学习作为学习对象的模型,然后进行演示者行动的开放循环重播。我们以此为基础开展多阶段任务,在人类演示之后,机器人可以自主地为整个多阶段任务收集图像数据,通过在序列中达到下一个对象,然后重放演示,然后在循环中重复所有阶段的任务。我们用一系列日常式多阶段任务的现实世界实验来评估,我们展示出我们的方法可以通过单一的演示来解决。视频和补充材料可以在https://www.robot-learning.uk/self-replay中找到。