Flange-Based Hand-Eye Calibration Using a 3D Camera With High Resolution, Accuracy, and Frame Rate

Point cloud data provides three-dimensional (3D) measurement of the geometric details in the physical world, which relies heavily on the quality of the machine vision system. In this paper, we explore the potentials of a 3D scanner of high quality (15 million points per second), accuracy (up to 0.15...

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Main Authors: Fang Wan, Chaoyang Song
Format: Article
Language:English
Published: Frontiers Media S.A. 2020-05-01
Series:Frontiers in Robotics and AI
Subjects:
Online Access:https://www.frontiersin.org/article/10.3389/frobt.2020.00065/full
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spelling doaj-36bc4426bd7a42a9a6c1d2b38ca76af32020-11-25T03:26:41ZengFrontiers Media S.A.Frontiers in Robotics and AI2296-91442020-05-01710.3389/frobt.2020.00065537294Flange-Based Hand-Eye Calibration Using a 3D Camera With High Resolution, Accuracy, and Frame RateFang Wan0Chaoyang Song1AncoraSpring, Inc. and SUSTech Institute of Robotics, Southern University of Science and Technology, Shenzhen, ChinaDepartment of Mechanical and Energy Engineering, Southern University of Science and Technology, Shenzhen, ChinaPoint cloud data provides three-dimensional (3D) measurement of the geometric details in the physical world, which relies heavily on the quality of the machine vision system. In this paper, we explore the potentials of a 3D scanner of high quality (15 million points per second), accuracy (up to 0.150 mm), and frame rate (up to 20 FPS) during static and dynamic measurements of the robot flange for direct hand-eye calibration and trajectory error tracking. With the availability of high-quality point cloud data, we can exploit the standardized geometric features on the robot flange for 3D measurement, which are directly accessible for hand-eye calibration problems. In the meanwhile, we tested the proposed flange-based calibration methods in a dynamic setting to capture point cloud data in a high frame rate. We found that our proposed method works robustly even in dynamic environments, enabling a versatile hand-eye calibration during motion. Furthermore, capturing high-quality point cloud data in real-time opens new doors for the use of 3D scanners, capable of detecting sensitive anomalies of refined details even in motion trajectories. Codes and sample data of this calibration method is provided at Github (https://github.com/ancorasir/flange_handeye_calibration).https://www.frontiersin.org/article/10.3389/frobt.2020.00065/full3D scannerhand-eye calibrationrobustnessflange-based calibrationphotoneo
collection DOAJ
language English
format Article
sources DOAJ
author Fang Wan
Chaoyang Song
spellingShingle Fang Wan
Chaoyang Song
Flange-Based Hand-Eye Calibration Using a 3D Camera With High Resolution, Accuracy, and Frame Rate
Frontiers in Robotics and AI
3D scanner
hand-eye calibration
robustness
flange-based calibration
photoneo
author_facet Fang Wan
Chaoyang Song
author_sort Fang Wan
title Flange-Based Hand-Eye Calibration Using a 3D Camera With High Resolution, Accuracy, and Frame Rate
title_short Flange-Based Hand-Eye Calibration Using a 3D Camera With High Resolution, Accuracy, and Frame Rate
title_full Flange-Based Hand-Eye Calibration Using a 3D Camera With High Resolution, Accuracy, and Frame Rate
title_fullStr Flange-Based Hand-Eye Calibration Using a 3D Camera With High Resolution, Accuracy, and Frame Rate
title_full_unstemmed Flange-Based Hand-Eye Calibration Using a 3D Camera With High Resolution, Accuracy, and Frame Rate
title_sort flange-based hand-eye calibration using a 3d camera with high resolution, accuracy, and frame rate
publisher Frontiers Media S.A.
series Frontiers in Robotics and AI
issn 2296-9144
publishDate 2020-05-01
description Point cloud data provides three-dimensional (3D) measurement of the geometric details in the physical world, which relies heavily on the quality of the machine vision system. In this paper, we explore the potentials of a 3D scanner of high quality (15 million points per second), accuracy (up to 0.150 mm), and frame rate (up to 20 FPS) during static and dynamic measurements of the robot flange for direct hand-eye calibration and trajectory error tracking. With the availability of high-quality point cloud data, we can exploit the standardized geometric features on the robot flange for 3D measurement, which are directly accessible for hand-eye calibration problems. In the meanwhile, we tested the proposed flange-based calibration methods in a dynamic setting to capture point cloud data in a high frame rate. We found that our proposed method works robustly even in dynamic environments, enabling a versatile hand-eye calibration during motion. Furthermore, capturing high-quality point cloud data in real-time opens new doors for the use of 3D scanners, capable of detecting sensitive anomalies of refined details even in motion trajectories. Codes and sample data of this calibration method is provided at Github (https://github.com/ancorasir/flange_handeye_calibration).
topic 3D scanner
hand-eye calibration
robustness
flange-based calibration
photoneo
url https://www.frontiersin.org/article/10.3389/frobt.2020.00065/full
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AT chaoyangsong flangebasedhandeyecalibrationusinga3dcamerawithhighresolutionaccuracyandframerate
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