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Main Authors: Zuo, Yiming, Qiu, Weichao, Xie, Lingxi, Zhong, Fangwei, Wang, Yizhou, Yuille, Alan L.
Format: Preprint
Published: 2018
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Online Access:https://arxiv.org/abs/1812.00725
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author Zuo, Yiming
Qiu, Weichao
Xie, Lingxi
Zhong, Fangwei
Wang, Yizhou
Yuille, Alan L.
author_facet Zuo, Yiming
Qiu, Weichao
Xie, Lingxi
Zhong, Fangwei
Wang, Yizhou
Yuille, Alan L.
contents Training a robotic arm to accomplish real-world tasks has been attracting increasing attention in both academia and industry. This work discusses the role of computer vision algorithms in this field. We focus on low-cost arms on which no sensors are equipped and thus all decisions are made upon visual recognition, e.g., real-time 3D pose estimation. This requires annotating a lot of training data, which is not only time-consuming but also laborious. In this paper, we present an alternative solution, which uses a 3D model to create a large number of synthetic data, trains a vision model in this virtual domain, and applies it to real-world images after domain adaptation. To this end, we design a semi-supervised approach, which fully leverages the geometric constraints among keypoints. We apply an iterative algorithm for optimization. Without any annotations on real images, our algorithm generalizes well and produces satisfying results on 3D pose estimation, which is evaluated on two real-world datasets. We also construct a vision-based control system for task accomplishment, for which we train a reinforcement learning agent in a virtual environment and apply it to the real-world. Moreover, our approach, with merely a 3D model being required, has the potential to generalize to other types of multi-rigid-body dynamic systems. Website: https://qiuwch.github.io/craves.ai. Code: https://github.com/zuoym15/craves.ai
format Preprint
id arxiv_https___arxiv_org_abs_1812_00725
institution arXiv
publishDate 2018
record_format arxiv
spellingShingle CRAVES: Controlling Robotic Arm with a Vision-based Economic System
Zuo, Yiming
Qiu, Weichao
Xie, Lingxi
Zhong, Fangwei
Wang, Yizhou
Yuille, Alan L.
Computer Vision and Pattern Recognition
Training a robotic arm to accomplish real-world tasks has been attracting increasing attention in both academia and industry. This work discusses the role of computer vision algorithms in this field. We focus on low-cost arms on which no sensors are equipped and thus all decisions are made upon visual recognition, e.g., real-time 3D pose estimation. This requires annotating a lot of training data, which is not only time-consuming but also laborious. In this paper, we present an alternative solution, which uses a 3D model to create a large number of synthetic data, trains a vision model in this virtual domain, and applies it to real-world images after domain adaptation. To this end, we design a semi-supervised approach, which fully leverages the geometric constraints among keypoints. We apply an iterative algorithm for optimization. Without any annotations on real images, our algorithm generalizes well and produces satisfying results on 3D pose estimation, which is evaluated on two real-world datasets. We also construct a vision-based control system for task accomplishment, for which we train a reinforcement learning agent in a virtual environment and apply it to the real-world. Moreover, our approach, with merely a 3D model being required, has the potential to generalize to other types of multi-rigid-body dynamic systems. Website: https://qiuwch.github.io/craves.ai. Code: https://github.com/zuoym15/craves.ai
title CRAVES: Controlling Robotic Arm with a Vision-based Economic System
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/1812.00725