Deep Learning–Based Intelligent Measurement Methods and System for Cmm

29 Pages Posted: 5 Jun 2023

See all articles by Zhenying Cheng

Zhenying Cheng

Hefei University of Technology

Yuan Sun

Hefei University of Technology

Kang Hu

Hefei University of Technology

Jie Li

Hefei University of Technology

Tien-Fu Lu

University of Adelaide

Ruijun Li

Hefei University of Technology

Abstract

Extensive manual intervention and management are typically required when using coordinate measuring machines (CMMs) for inspections in production lines leading to low efficiency. This study presents a deep learning–based intelligent measurement method and system for measuring typical features (including holes, cylinders, balls, steps, and slots) of common components to improve inspection efficiency. This method combines vision sensors and a trigger probe. The You Only Look Once algorithm was employed to learn and achieve intelligent detection of features. An image-matching algorithm based on image inverse perspective transformation was designed, and the ant colony algorithm was implemented to optimize the measurement sequence. Then, an automatic approach for feature measurement path planning was designed. The presented system was tested using CMM, and a component with multiple typical features was measured. Results show that this method and system can be efficaciously implemented for intelligent measurement of typical features.

Keywords: CMM, Intelligent measurement, Cooperative sensor configuration

Suggested Citation

Cheng, Zhenying and Sun, Yuan and Hu, Kang and Li, Jie and Lu, Tien-Fu and Li, Ruijun, Deep Learning–Based Intelligent Measurement Methods and System for Cmm. Available at SSRN: https://ssrn.com/abstract=4469728 or http://dx.doi.org/10.2139/ssrn.4469728

Zhenying Cheng

Hefei University of Technology ( email )

193 Tunxi Rd
Baohe
Hefei
China

Yuan Sun

Hefei University of Technology ( email )

193 Tunxi Rd
Baohe
Hefei
China

Kang Hu

Hefei University of Technology ( email )

193 Tunxi Rd
Baohe
Hefei
China

Jie Li

Hefei University of Technology ( email )

193 Tunxi Rd
Baohe
Hefei
China

Tien-Fu Lu

University of Adelaide ( email )

North Terrace
Adelaide, 5000
Australia

Ruijun Li (Contact Author)

Hefei University of Technology ( email )

193 Tunxi Rd
Baohe
Hefei
China

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