ARCap: Collecting High-quality Human Demonstrations for Robot Learning with Augmented Reality Feedback
Sirui Chen, Chen Wang, Kaden Nguyen, Li Fei-Fei, C. Karen Liu
- Year
- 2024
- Access
- Open access
Abstract
Recent progress in imitation learning from human demonstrations has shown promising results in teaching robots manipulation skills. To further scale up training datasets, recent works start to use portable data collection devices without the need for physical robot hardware. However, due to the absence of on-robot feedback during data collection, the data quality depends heavily on user expertise, and many devices are limited to specific robot embodiments. We propose ARCap, a portable data collection system that provides visual feedback through augmented reality (AR) and haptic warnings to guide users in collecting high-quality demonstrations. Through extensive user studies, we show that ARCap enables novice users to collect robot-executable data that matches robot kinematics and avoids collisions with the scenes. With data collected from ARCap, robots can perform challenging tasks, such as manipulation in cluttered environments and long-horizon cross-embodiment manipulation. ARCap is fully open-source and easy to calibrate; all components are built from off-the-shelf products. More details and results can be found on our website: https://stanford-tml.github.io/ARCap
Keywords
Related papers
The Uncanny Valley [From the Field]
Masahiro Mori, Karl F. MacDorman, Norri Kageki
2012
Measurement Instruments for the Anthropomorphism, Animacy, Likeability, Perceived Intelligence, and Perceived Safety of Robots
Christoph Bartneck, Dana Kulić, Elizabeth A. Croft +1 more
2008
The development of Honda humanoid robot
Kazuo Hirai, Masato Hirose, Y. Haikawa +1 more
2002
A Meta-Analysis of Factors Affecting Trust in Human-Robot Interaction
Peter A. Hancock, Deborah R. Billings, Kristin E. Schaefer +3 more
2011