Non-destructive detection for mosaic ceramic surface defects based on convolutional neural networks

IF 2.4 4区 材料科学 Q2 MATERIALS SCIENCE, CHARACTERIZATION & TESTING Materials Testing Pub Date : 2023-08-11 DOI:10.1515/mt-2023-0051
Guanping Dong, Shanwei Sun, X. Kong, Nanshou Wu, Hong Zhang, Xiangyang Chen, Hao Feng, Pingnan Huang, Zixi Wang
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Abstract

Abstract Mosaic ceramic art pattern with noble, elegant features, it is a unique form of art creation in ancient Greece and the ancient Rome period has been loved by artists and created a lot of classic large-scale exterior mosaic ceramic art works. Small size square mosaic ceramic as the basic raw material for the creation of large exterior mosaic art, it directly affects the quality of the work created by the artist, so these ceramic mosaic ceramic materials need to undergo rigorous inspection to meet the needs of the artist’s high-quality art creation. However, small size multi-color square mosaic ceramics are different from ordinary large target ceramics, they have the characteristics of small size and easy reflection, currently mainly using manual inspection, the existing automatic inspection methods have the problem of low efficiency and accuracy, cannot meet the needs of artists for the quantity and quality of mosaic ceramics. To solve these problems, this paper proposes a new convolutional network-based fast nondestructive testing method for detecting square mosaic tiles. The detection method is based on the convolutional neural network YOLOv5s model, and by introducing the AF-FPN module and the data enhancement module, the method further improves the recognition performance of the model relative to the original YOLOv5s model and achieves the fast detection of surface defects on square mosaic ceramics. The experimental results show that the detection method for small size multicolor square mosaic ceramic tile surface minor defects detection rate of up to 94 % or more, a single square mosaic ceramic detection time of 0.41 s. The method takes into account the detection accuracy and speed, can be fast and accurate screening of high-quality, defect-free small size multicolor square mosaic ceramic, to meet the artist’s requirements for high-quality mosaic ceramic raw materials Quality and quantity requirements, to ensure the quality of the creation of mosaic art patterns, to better show the charm of the mosaic art patterns role. At the same time, the method can not only be applied to the detection of mosaic ceramics, the method can also be applied to have a similar small volume, easy to reflect the characteristics of small target object defect detection.
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基于卷积神经网络的马赛克陶瓷表面缺陷无损检测
摘要马赛克陶瓷艺术图案具有高贵、典雅的特点,它是一种独特的艺术创作形式,在古希腊和古罗马时期就受到艺术家们的喜爱,创作了许多经典的大型外观马赛克陶瓷艺术作品。小尺寸方形马赛克陶瓷作为创作大型外部马赛克艺术的基本原料,它直接影响着艺术家创作的作品质量,所以这些陶瓷马赛克陶瓷材料需要经过严格的检验,才能满足艺术家高品质艺术创作的需要。然而,小尺寸多色方形马赛克陶瓷不同于普通的大靶陶瓷,它们具有尺寸小、易反射的特点,目前主要采用人工检测,现有的自动检测方法存在效率和精度低的问题,不能满足艺术家对马赛克陶瓷数量和质量的需求。为了解决这些问题,本文提出了一种新的基于卷积网络的方形马赛克快速无损检测方法。该检测方法基于卷积神经网络YOLOv5s模型,通过引入AF-FPN模块和数据增强模块,该方法相对于原有的YOLOv5s模型进一步提高了模型的识别性能,实现了对方形马赛克陶瓷表面缺陷的快速检测。实验结果表明,该检测方法对小尺寸多色方形马赛克瓷砖表面微小缺陷的检出率可达94 %以上,单个方形马赛克瓷砖的检测时间为0.41 s。该方法兼顾了检测精度和速度,能够快速准确地筛选出优质、无缺陷的小尺寸多色方形马赛克陶瓷,满足了艺术家对优质马赛克陶瓷原料的质量和数量要求,保证了马赛克艺术图案的创作质量,更好地展现了马赛克艺术图案的魅力作用。同时,该方法不仅可以应用于马赛克陶瓷的检测,该方法还可以应用于具有类似体积小、易于体现小目标物体特征的缺陷检测。
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来源期刊
Materials Testing
Materials Testing 工程技术-材料科学:表征与测试
CiteScore
4.20
自引率
36.00%
发文量
165
审稿时长
4-8 weeks
期刊介绍: Materials Testing is a SCI-listed English language journal dealing with all aspects of material and component testing with a special focus on transfer between laboratory research into industrial application. The journal provides first-hand information on non-destructive, destructive, optical, physical and chemical test procedures. It contains exclusive articles which are peer-reviewed applying respectively high international quality criterions.
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