2021
DOI: 10.1155/2021/9544809
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Bearing Defect Detection with Unsupervised Neural Networks

Abstract: Bearings always suffer from surface defects, such as scratches, black spots, and pits. Those surface defects have great effects on the quality and service life of bearings. Therefore, the defect detection of the bearing has always been the focus of the bearing quality control. Deep learning has been successfully applied to the objection detection due to its excellent performance. However, it is difficult to realize automatic detection of bearing surface defects based on data-driven-based deep learning due to f… Show more

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Cited by 3 publications
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“…However, in the complex and variable processes of production, assembly, and transportation, bearing defects have become one of the core issues urgently needing resolution in the chemical manufacturing industry. To ensure that bearings are in good condition before use, not only accurate detection methods are needed but also, in factory testing scenarios, especially in industrial production line inspection scenarios, there is a challenge to perform a large number of bearing inspections in an extremely short time [2]. Traditional detection methods, while performing well in providing high accuracy, often face the dilemma of slow reasoning in large-scale inspections.…”
Section: Introductionmentioning
confidence: 99%
“…However, in the complex and variable processes of production, assembly, and transportation, bearing defects have become one of the core issues urgently needing resolution in the chemical manufacturing industry. To ensure that bearings are in good condition before use, not only accurate detection methods are needed but also, in factory testing scenarios, especially in industrial production line inspection scenarios, there is a challenge to perform a large number of bearing inspections in an extremely short time [2]. Traditional detection methods, while performing well in providing high accuracy, often face the dilemma of slow reasoning in large-scale inspections.…”
Section: Introductionmentioning
confidence: 99%