Current Status of Image Recognition Technology in the Field of Corrosion Protection Applications

Author:

Wang Xinran1ORCID,Zhang Wei1,Lin Zhifeng2,Li Haojie1,Zhang Yuanqing1,Quan Weiyin1,Chen Zhiwei3,You Xueqiang4,Zeng Yang5,Wang Gang3,Luo Bolin4,Yu Zhenghua4

Affiliation:

1. School of Chemical Engineering and Technology, Sun Yat-sen University, Zhuhai 519000, China

2. Jiangsu Institute of Marine Resources Development, Jiangsu Ocean University, 59 Cangwu Road, Haizhou, Lianyungang 222005, China

3. National & Local Joint Engineering Research Center of Harbor Oil & Gas Storage and Transportation Technology, Zhejiang Key Laboratory of Petrochemical Environmental Pollution Control, School of Petrochemical Engineering & Environment, Zhejiang Ocean University, Zhoushan 316022, China

4. Zhuhai Zhongke Huizhi Technology Co., Ltd., Zhuhai 518900, China

5. Zhuhai International Container Terminals (Gaolan) Co., Ltd., Zhuhai 519050, China

Abstract

Corrosion brings serious losses to the economy annually. Therefore, various corrosion protection and detection techniques are widely used in the daily maintenance of large metal engineering structures. The emergence of image recognition technology has brought a more convenient and faster way for nondestructive testing. Existing image recognition technology can be divided into two categories according to the algorithm: traditional image recognition technology and image recognition technology based on deep learning. These two types of technologies have been widely used in the three fields of metal, coating, and electrochemical data images. A large amount of work has been carried out to identify defects in metals and coatings, and deep learning-based methods also show potential for identifying electrochemical data images. Matching electrochemical images with the detection of defect morphology will bring a deeper understanding of image recognition techniques for metals and coatings. A database of accumulated morphology and electrochemical parameters will make it possible to predict the life of steel and coatings using image recognition techniques.

Funder

the Zhuhai industry-university-research cooperation project

National Natural Science Foundation of China

Publisher

MDPI AG

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