Publication: Learning markerless robot-depth camera calibration and end-effector pose estimation
Program
KU-Authors
KU Authors
Co-Authors
Editor & Affiliation
Compiler & Affiliation
Translator
Other Contributor
Date
Language
Embargo Status
N/A
Journal Title
Journal ISSN
Volume Title
Alternative Title
Abstract
Traditional approaches to extrinsic calibration use fiducial markers and learning-based approaches rely heavily on simulation data. In this work, we present a learning-based markerless extrinsic calibration system that uses a depth camera and does not rely on simulation data. We learn models for end-effector (EE) segmentation, single-frame rotation prediction and keypoint detection, from automatically generated real-world data. We use a transformation trick to get EE pose estimates from rotation predictions and a matching algorithm to get EE pose estimates from keypoint predictions. We further utilize the iterative closest point algorithm, multiple-frames, filtering and outlier detection to increase calibration robustness. Our evaluations with training data from multiple camera poses and test data from previously unseen poses give sub-centimeter and sub-deciradian average calibration and pose estimation errors. We also show that a carefully selected single training pose gives comparable results. © 2023 Proceedings of Machine Learning Research. All rights reserved.
Source
Publisher
Ml Research Press
Subject
Artificial intelligence, Theory and methods, Robotics
Citation
Has Part
Source
Proceedings of Machine Learning Research
Book Series Title
Edition
DOI
item.page.datauri
Link
Rights
N/A
