安宗权,王匀.一种非线性扩散与图像差分的金属表面缺陷检测方法[J].表面技术,2018,47(6):277-283.
AN Zong-quan,WANG Yun.A Metal Surface Defect Detection Method Based on Nonlinear Diffusion and Image Difference[J].Surface Technology,2018,47(6):277-283
一种非线性扩散与图像差分的金属表面缺陷检测方法
A Metal Surface Defect Detection Method Based on Nonlinear Diffusion and Image Difference
投稿时间:2018-02-04  修订日期:2018-06-20
DOI:10.16490/j.cnki.issn.1001-3660.2018.06.040
中文关键词:  自适应中值滤波  非线性扩散  图像差分  自适应二值化模型  金属表面缺陷检测
英文关键词:adaptive median filtering  nonlinear diffusion  image difference  adaptive two value model  metal surface defect detection
基金项目:国家自然科学基金(51575245,61741101);安徽省教育厅自然科学研究重点项目(KJ2016A753);安徽省自然科学基金项目(1608085QF154);安徽省科技攻关项目(1604a0902125);安徽省汽车工程实践教育中心项目(2014sjjd074)
作者单位
安宗权 1.芜湖职业技术学院 汽车工程学院,安徽 芜湖,241006;2.江苏大学 机械工程学院,江苏 镇江,212013 
王匀 江苏大学 机械工程学院,江苏 镇江,212013 
AuthorInstitution
AN Zong-quan 1.School of Automotive Engineering, Wuhu Institute of Technology, Wuhu 241006, China; 2.School of Mechanical Engineering, Jiangsu University, Zhenjiang 212013, China 
WANG Yun School of Mechanical Engineering, Jiangsu University, Zhenjiang 212013, China 
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中文摘要:
      目的 为检测金属产品表面缺陷提供一种有效的方法,希望可以对金属产品表面质量进行监控。方法 首先,引入自适应中值滤波方法对原始图像中的噪声进行滤除,以提高金属表面缺陷的检测正确度。然后,利用图像梯度的倒数对传统的P-M非线性扩散模型中的扩散因子进行改进,使得金属表面图像中梯度值较大的区域得以平滑,同时保持其他区域的平滑度不变。将金属表面的原始图像与经过非线性扩散后的图像进行图像差分运算,以消除光照度对金属表面图像的影响,获取均匀背景的金属表面图像,使得缺陷区与非缺陷区的对比度得以增强。最后,通过差分图像中图像块的标准差构造自适应二值化模型,对差分图像进行二值化,以提取金属表面的缺陷区域,实现对金属表面缺陷的准确检测。结果 通过对具有划痕、裂纹、缺口以及锈斑缺陷的图像进行检测表明,该方法能够对金属表面缺陷进行准确的检测。结论 所设计的方法能对金属表面缺陷进行检测,并且检测精度也优于当前其他金属表面缺陷检测方法。
英文摘要:
      The work aims to provide an effective method for detecting surface defects of metal products, so as to monitor surface quality of metal products. Firstly, adaptive median filtering method was introduced to filter noise in original image, so as to improve detection accuracy of metal surface defects. Then, reciprocal of image gradient was used to improve diffusion factor of traditional P-M nonlinear diffusion model, so that such areas with higher gradient value in the metal surface image could be smooth, while smoothness of other areas remained unchanged. The difference between the original image of metal surface and the image after nonlinear diffusion was applied to eliminate the influence of illumination on metal surface image, and obtain the image of metal surface with uniform background, so as to enhance the contrast between defect area and non-defect area. Finally, the adaptive two valued model was constructed based upon standard deviation of image block in the differential image, the differential image was binarized to extract defect area on metal surface and detect metal surface defects accurately. Detection of cracks, scratches, notch and rust defect images showed that this method could be used to accurately detect metal surface defects. The method designed in this paper can detect metal surface defects, and detection accuracy is also superior to other detection methods of metal surface defects.
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