Steel Sheet Defect Detection Based on Deep Learning Method

Weizhen Zeng, Zhiyuan You, Mingyue Huang, Zelong Kong, Yikuan Yu, Xinyi Le
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引用次数: 12

Abstract

Steel sheets have been widely used in the industrial field. With higher requirements for steel production, there is a growing need for factories to produce better quality steel sheets. Conventional steel sheet defect detection methods such as manual inspection are too laborious and inefficient. Therefore, in this paper, we manage to explore a possible solution for steel sheet defect detection and propose a novel image-based processing method. The image processing data enhancement method is used to extend the datasets for further training, then we use the transfer learning technique to train CNNs and extract features on the enhanced image set. A hierarchical model ensemble is applied to detect defects according to their locations. Experiments on enhanced datasets and real-world defect images achieve satisfying accuracy.
基于深度学习方法的钢板缺陷检测
钢板在工业领域得到了广泛的应用。随着人们对钢铁生产的要求越来越高,工厂越来越需要生产质量更好的钢板。传统的钢板缺陷检测方法,如人工检测,过于费力,效率低下。因此,在本文中,我们试图探索一种可能的钢板缺陷检测解决方案,并提出了一种新的基于图像的处理方法。首先利用图像处理数据增强方法对数据集进行扩展,然后利用迁移学习技术对增强后的图像集进行cnn训练和特征提取。根据缺陷的位置,采用层次模型集成来检测缺陷。在增强数据集和真实缺陷图像上的实验取得了令人满意的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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