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TAILOR: Teaching with Active and Incremental Learning for Object Registration

24 May 2022
Qianli Xu
Nicolas Gauthier
Wenyu Liang
Fen Fang
Hui Li Tan
Ying Sun
Yan Wu
Liyuan Li
Joo-Hwee Lim
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Abstract

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.

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