Image Processing with Deep Learning: Surface Defect Detection of Metal Gears through Deep Learning

IF 0.5 4区 材料科学 Q4 MATERIALS SCIENCE, CHARACTERIZATION & TESTING Materials Evaluation Pub Date : 2022-02-01 DOI:10.32548/2022.me-04230
Yavuz Selim Balcioglu, B. Sezen, M. S. Gok, Sezai Tunca
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引用次数: 0

Abstract

Intelligent production requires improved data analytics and better technological possibilities to improve system performance and decision making. With the widespread use of the machine learning process, a growing need has arisen for processing extensive production data, equipped with high volumes, high speed, and high diversity. At this point, deep learning provides advanced analysis tools for processing and analyzing extensive production data. The deep convolutional neural network (DCNN) displays state-of-the-art performance on many grounds, including metal manufacturing surface defect detection. However, there is still space for improving the defect detection performance over generic DCNN models. The proposed approach performed better than the associated methods in the particular area of surface crack detection. The defect zones of disjointed results are classified into their unique classes by a DCNN. The experimental outcomes prove that this method meets the durability and efficiency requirements for metallic object defect detection. In time, it can also be extended to other detection methods. At the same time, the study will increase the accuracy quality of the features that can make a difference in the deep learning method for the detection of surface defects.
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深度学习的图像处理:通过深度学习检测金属齿轮的表面缺陷
智能生产需要改进的数据分析和更好的技术可能性来提高系统性能和决策。随着机器学习过程的广泛使用,人们越来越需要处理大量、高速和高多样性的生产数据。在这一点上,深度学习为处理和分析大量生产数据提供了先进的分析工具。深度卷积神经网络(DCNN)在许多方面表现出最先进的性能,包括金属制造表面缺陷检测。然而,与通用DCNN模型相比,缺陷检测性能仍有改进的空间。在表面裂纹检测的特定领域,所提出的方法比相关方法表现得更好。通过DCNN将不相交结果的缺陷区域划分为其唯一的类别。实验结果证明,该方法满足金属物体缺陷检测的耐久性和效率要求。随着时间的推移,它还可以扩展到其他检测方法。同时,该研究将提高特征的准确性和质量,这些特征可以在深度学习方法中对表面缺陷的检测产生影响。
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来源期刊
Materials Evaluation
Materials Evaluation 工程技术-材料科学:表征与测试
CiteScore
0.90
自引率
16.70%
发文量
35
审稿时长
6-12 weeks
期刊介绍: Materials Evaluation publishes articles, news and features intended to increase the NDT practitioner’s knowledge of the science and technology involved in the field, bringing informative articles to the NDT public while highlighting the ongoing efforts of ASNT to fulfill its mission. M.E. is a peer-reviewed journal, relying on technicians and researchers to help grow and educate its members by providing relevant, cutting-edge and exclusive content containing technical details and discussions. The only periodical of its kind, M.E. is circulated to members and nonmember paid subscribers. The magazine is truly international in scope, with readers in over 90 nations. The journal’s history and archive reaches back to the earliest formative days of the Society.
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