Performance Evaluation of Optical Motion Capture Sensors for Assembly Motion Capturing

The optical motion capture (MoCap) sensor provides an effective way to capture human motions and transform them into valuable data that can be applied to certain tasks, e.g. robot learning from demonstration (LfD). In spite of the wide utilization of optical MoCaps in LfD studies, there are few work...

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Main Authors: Haopeng Hu, Zhiqi Cao, Xiansheng Yang, Hao Xiong, Yunjiang Lou
Format: Article
Language:English
Published: IEEE 2021-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9408569/
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spelling doaj-fee952b1a38c4277bf7a60b747ea97a82021-04-26T23:00:51ZengIEEEIEEE Access2169-35362021-01-019614446145410.1109/ACCESS.2021.30742609408569Performance Evaluation of Optical Motion Capture Sensors for Assembly Motion CapturingHaopeng Hu0https://orcid.org/0000-0002-4069-6431Zhiqi Cao1Xiansheng Yang2https://orcid.org/0000-0002-7123-6745Hao Xiong3Yunjiang Lou4https://orcid.org/0000-0001-8203-7795Harbin Institute of Technology Shenzhen (HITSZ), Shenzhen, ChinaHarbin Institute of Technology Shenzhen (HITSZ), Shenzhen, ChinaHarbin Institute of Technology Shenzhen (HITSZ), Shenzhen, ChinaHarbin Institute of Technology Shenzhen (HITSZ), Shenzhen, ChinaHarbin Institute of Technology Shenzhen (HITSZ), Shenzhen, ChinaThe optical motion capture (MoCap) sensor provides an effective way to capture human motions and transform them into valuable data that can be applied to certain tasks, e.g. robot learning from demonstration (LfD). In spite of the wide utilization of optical MoCaps in LfD studies, there are few works that explore their potentiality in small parts robotic assembly. Robot manipulation skill learning from demonstration has gained the attention of researchers recently and robotic 3C (Computer, Communication, and Consumer Electronics) product assembly turns out to be a promising application thanks to the increasing consumption of 3C products. To further explore the potential of optical MoCaps in robotic 3C product assembly. This work proposes a performance evaluation protocol that takes the characters of both optical MoCaps and 3C product assembly operations into account. The proposed evaluation protocol includes static and trajectory evaluations. The former refers to the widely used evaluation indicators such as precision and accuracy. Meanwhile, the trajectory evaluation takes contour error as an error metric. Three popular optical MoCaps are studied in the experiment. Experiment results show that the static performance of all of the three optical MoCaps can meet the requirements of the 3C product assembly task. What’s more, Prime X41 possesses the best trajectory performance. This work sheds light on the wider usage of optical MoCaps in manufacturing industries.https://ieeexplore.ieee.org/document/9408569/Contour errorlearning from demonstrationoptical motion captureperformance evaluation
collection DOAJ
language English
format Article
sources DOAJ
author Haopeng Hu
Zhiqi Cao
Xiansheng Yang
Hao Xiong
Yunjiang Lou
spellingShingle Haopeng Hu
Zhiqi Cao
Xiansheng Yang
Hao Xiong
Yunjiang Lou
Performance Evaluation of Optical Motion Capture Sensors for Assembly Motion Capturing
IEEE Access
Contour error
learning from demonstration
optical motion capture
performance evaluation
author_facet Haopeng Hu
Zhiqi Cao
Xiansheng Yang
Hao Xiong
Yunjiang Lou
author_sort Haopeng Hu
title Performance Evaluation of Optical Motion Capture Sensors for Assembly Motion Capturing
title_short Performance Evaluation of Optical Motion Capture Sensors for Assembly Motion Capturing
title_full Performance Evaluation of Optical Motion Capture Sensors for Assembly Motion Capturing
title_fullStr Performance Evaluation of Optical Motion Capture Sensors for Assembly Motion Capturing
title_full_unstemmed Performance Evaluation of Optical Motion Capture Sensors for Assembly Motion Capturing
title_sort performance evaluation of optical motion capture sensors for assembly motion capturing
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2021-01-01
description The optical motion capture (MoCap) sensor provides an effective way to capture human motions and transform them into valuable data that can be applied to certain tasks, e.g. robot learning from demonstration (LfD). In spite of the wide utilization of optical MoCaps in LfD studies, there are few works that explore their potentiality in small parts robotic assembly. Robot manipulation skill learning from demonstration has gained the attention of researchers recently and robotic 3C (Computer, Communication, and Consumer Electronics) product assembly turns out to be a promising application thanks to the increasing consumption of 3C products. To further explore the potential of optical MoCaps in robotic 3C product assembly. This work proposes a performance evaluation protocol that takes the characters of both optical MoCaps and 3C product assembly operations into account. The proposed evaluation protocol includes static and trajectory evaluations. The former refers to the widely used evaluation indicators such as precision and accuracy. Meanwhile, the trajectory evaluation takes contour error as an error metric. Three popular optical MoCaps are studied in the experiment. Experiment results show that the static performance of all of the three optical MoCaps can meet the requirements of the 3C product assembly task. What’s more, Prime X41 possesses the best trajectory performance. This work sheds light on the wider usage of optical MoCaps in manufacturing industries.
topic Contour error
learning from demonstration
optical motion capture
performance evaluation
url https://ieeexplore.ieee.org/document/9408569/
work_keys_str_mv AT haopenghu performanceevaluationofopticalmotioncapturesensorsforassemblymotioncapturing
AT zhiqicao performanceevaluationofopticalmotioncapturesensorsforassemblymotioncapturing
AT xianshengyang performanceevaluationofopticalmotioncapturesensorsforassemblymotioncapturing
AT haoxiong performanceevaluationofopticalmotioncapturesensorsforassemblymotioncapturing
AT yunjianglou performanceevaluationofopticalmotioncapturesensorsforassemblymotioncapturing
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