Defect Detection of Micro-Precision Glass Insulated Terminals
Micro-precision Glass Insulated Terminals (referred to as glass terminals) are the core components used in precision electronic equipment and are often used for electrical connections between modules. As a glass terminal, its quality has a great influence on the performance of precision electronic e...
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Atlantis Press
2021-05-01
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doaj-3304fb8c8d3d4b53af0e0801c239ef5e2021-06-15T15:41:14ZengAtlantis PressJournal of Robotics, Networking and Artificial Life (JRNAL)2352-63862021-05-018110.2991/jrnal.k.210521.005Defect Detection of Micro-Precision Glass Insulated TerminalsQunpo LiuMengke WangZonghui LiuBo SuNaohiko HanajimaMicro-precision Glass Insulated Terminals (referred to as glass terminals) are the core components used in precision electronic equipment and are often used for electrical connections between modules. As a glass terminal, its quality has a great influence on the performance of precision electronic equipment. Due to the limitations of materials and production processes, some of the glass terminals produced have defects, such as missing blocks, pores and cracks. At present, most of the defect detection of glass terminals is done by manual inspection, and rapid detection easily causes eye fatigue, so it is difficult to ensure product quality and production efficiency. The traditional defect detection technology is difficult to effectively detect the very different defects of the glass terminal. Therefore, this paper proposes to use deep learning technology to detect missing blocks. First, preprocess the sample pictures of the missing block defects of the glass terminal, and then train the improved Faster Region-CNN deep learning network for defect detection. According to the test results, the accuracy of the algorithm in detecting missing defects in the glass terminal is as high as 93.52%.https://www.atlantis-press.com/article/125957115/viewMicro-precision glass insulated terminalimproved Faster R-CNNmissing block detection |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Qunpo Liu Mengke Wang Zonghui Liu Bo Su Naohiko Hanajima |
spellingShingle |
Qunpo Liu Mengke Wang Zonghui Liu Bo Su Naohiko Hanajima Defect Detection of Micro-Precision Glass Insulated Terminals Journal of Robotics, Networking and Artificial Life (JRNAL) Micro-precision glass insulated terminal improved Faster R-CNN missing block detection |
author_facet |
Qunpo Liu Mengke Wang Zonghui Liu Bo Su Naohiko Hanajima |
author_sort |
Qunpo Liu |
title |
Defect Detection of Micro-Precision Glass Insulated Terminals |
title_short |
Defect Detection of Micro-Precision Glass Insulated Terminals |
title_full |
Defect Detection of Micro-Precision Glass Insulated Terminals |
title_fullStr |
Defect Detection of Micro-Precision Glass Insulated Terminals |
title_full_unstemmed |
Defect Detection of Micro-Precision Glass Insulated Terminals |
title_sort |
defect detection of micro-precision glass insulated terminals |
publisher |
Atlantis Press |
series |
Journal of Robotics, Networking and Artificial Life (JRNAL) |
issn |
2352-6386 |
publishDate |
2021-05-01 |
description |
Micro-precision Glass Insulated Terminals (referred to as glass terminals) are the core components used in precision electronic equipment and are often used for electrical connections between modules. As a glass terminal, its quality has a great influence on the performance of precision electronic equipment. Due to the limitations of materials and production processes, some of the glass terminals produced have defects, such as missing blocks, pores and cracks. At present, most of the defect detection of glass terminals is done by manual inspection, and rapid detection easily causes eye fatigue, so it is difficult to ensure product quality and production efficiency. The traditional defect detection technology is difficult to effectively detect the very different defects of the glass terminal. Therefore, this paper proposes to use deep learning technology to detect missing blocks. First, preprocess the sample pictures of the missing block defects of the glass terminal, and then train the improved Faster Region-CNN deep learning network for defect detection. According to the test results, the accuracy of the algorithm in detecting missing defects in the glass terminal is as high as 93.52%. |
topic |
Micro-precision glass insulated terminal improved Faster R-CNN missing block detection |
url |
https://www.atlantis-press.com/article/125957115/view |
work_keys_str_mv |
AT qunpoliu defectdetectionofmicroprecisionglassinsulatedterminals AT mengkewang defectdetectionofmicroprecisionglassinsulatedterminals AT zonghuiliu defectdetectionofmicroprecisionglassinsulatedterminals AT bosu defectdetectionofmicroprecisionglassinsulatedterminals AT naohikohanajima defectdetectionofmicroprecisionglassinsulatedterminals |
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1721375904153731072 |