When deploying a robot to a new task, one often has to train it to detect novel objects, which is time-consuming and labor-intensive. We present TAILOR -- a method and system for object registration with active and incremental learning. When instructed by a human teacher to register an object, TAILOR is able to automatically select viewpoints to capture informative images by actively exploring viewpoints, and employs a fast incremental learning algorithm to learn new objects without potential forgetting of previously learned objects. We demonstrate the effectiveness of our method with a KUKA robot to learn novel objects used in a real-world gearbox assembly task through natural interactions.
翻译:当部署机器人执行新任务时,人们往往必须训练它来探测新物体,因为新物体耗时费时费力。我们展示了TAILOR -- -- 物体登记的方法和系统,它是一种积极和渐进学习的方法和系统。当人类老师指示对物体进行登记时,TAILOR能够通过积极探索观点,自动选择观点来捕捉信息图像,并使用快速递增学习算法来学习新物体,而不会忘记以前学到的物体。我们用KUKA机器人来学习通过自然互动在现实世界变速箱组装任务中使用的新物体的方法证明了我们的方法的有效性。