Robots have the capability to collect large amounts of data autonomously by interacting with objects in the world. However, it is often not obvious \emph{how} to learning from autonomously collected data without human-labeled supervision. In this work we learn pixel-wise object representations from unsupervised pick and place data that generalize to new objects. We introduce a novel framework for using these representations in order to predict where to pick and where to place in order to match a goal image. Finally, we demonstrate the utility of our approach in a simulated grasping environment.
@article{arxiv.2008.11466,
title = {Self-Supervised Goal-Conditioned Pick and Place},
author = {Coline Devin and Payam Rowghanian and Chris Vigorito and Will Richards and Khashayar Rohanimanesh},
journal= {arXiv preprint arXiv:2008.11466},
year = {2020}
}
Comments
In RSS 2020 Visual Learning and Reasoning for Robotic Manipulation Workshop