ROCVJun 23, 2023

AR2-D2:Training a Robot Without a Robot

UW
arXiv:2306.13818v147 citationsh-index: 133
Originality Incremental advance
AI Analysis

This addresses the bottleneck of data collection for robot learning by making it more accessible and scalable, though it is incremental in improving existing demonstration methods.

The authors tackled the problem of collecting robot demonstrations without needing specialized training or real robots, and showed that their AR-based system enables training behavior cloning agents as effectively as real-world robot demonstrations.

Diligently gathered human demonstrations serve as the unsung heroes empowering the progression of robot learning. Today, demonstrations are collected by training people to use specialized controllers, which (tele-)operate robots to manipulate a small number of objects. By contrast, we introduce AR2-D2: a system for collecting demonstrations which (1) does not require people with specialized training, (2) does not require any real robots during data collection, and therefore, (3) enables manipulation of diverse objects with a real robot. AR2-D2 is a framework in the form of an iOS app that people can use to record a video of themselves manipulating any object while simultaneously capturing essential data modalities for training a real robot. We show that data collected via our system enables the training of behavior cloning agents in manipulating real objects. Our experiments further show that training with our AR data is as effective as training with real-world robot demonstrations. Moreover, our user study indicates that users find AR2-D2 intuitive to use and require no training in contrast to four other frequently employed methods for collecting robot demonstrations.

Foundations

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