一种基于人工免疫系统的冷轧带钢表面缺陷检测方法

Guifang Wu, Xiuming Sun, J. Pu, Haitao Zhang
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引用次数: 2

摘要

由于冷轧带钢表面缺陷图像受到大量噪声信息的干扰,以及光照不足或光照不均匀等图像质量问题,采用传统的数学形态学等图像处理方法检测缺陷会带来很大的困难,无法获得理想的处理效果。针对这一问题,结合人工免疫系统技术的自组织和自识别特点,研究了基于AIS的冷轧带钢表面缺陷检测方法。在保证检测器与抗原之间的包含关系以及自身在域空间中的位置信息的基础上,引入分块空间模式,提出了一种基于检测器的分块生成算法,并将其应用于冷轧带钢表面缺陷图像的检测。实验表明,该方法无论对于低对比度图像,还是对于光照不足或光照不均匀的图像,其缺陷提取效果都明显优于传统的缺陷图像检测算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel surface defect detection method of cold rolled strips based on Artificial Immune System
Because surface defect image of cold rolled strips is disturbed by mass of noise information, as well as the image quality problem of inadequate illumination or uneven illumination, it will raise great difficulty when detecting the defect with traditional image process methods such as mathematic morphology, and it cannot get an ideal treatment effect. According to the problem, and combining the self-organizing and self-recognition features of Artificial Immune System technology, surface defect detection method of cold rolled strips based on AIS is studied. By assuring the including relationships among detectors and antigens, and the position information of self-body in domain space, the block space mode is introduced to present a block generating algorithm based on detector, and applied to detect surface defect image of cold rolled strips. Experiments show that this method is significantly superior in defect extraction to traditional defect image detection algorithms not only for images with low-contrast but also for images with inadequate illumination or uneven illumination.
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