Defect detection method for complex surface based on human visual characteristics and feature extracting

Yubin Du, Pin Cao, Yongying Yang, Fanyi Wang, Rongzhi Liu, Fan Wu, Pengfei Zhang, Huiting Chai, Jiabin Jiang, Yihui Zhang, Guohua Feng, Xiang Xiao, Yanwei Li
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引用次数: 1

Abstract

Aimed at the problem of strong background interference introduced in digital image processing from complex surfaces under industrial defect detection, a method for complex surface defect detection based on human visual characteristics and feature extracting is proposed. Inspired by the visual attention mechanism, defect areas can be identified from the background noise conveniently by human eyes. We introduce the improved grayscale adjustment and frequency-tuned saliency algorithm combined with the salient region mask obtained by dilation and differential operation to eliminate the background noise and extract defect areas. Meanwhile the directional feature matching and merging algorithm is applied to enhance directional features and retain details of defects. Testing images are captured by our established detecting system. Experimental results show that our method can retain defect information completely and achieve considerable extracting efficiency and detecting accuracy.
基于人的视觉特征和特征提取的复杂表面缺陷检测方法
针对工业缺陷检测下复杂表面数字图像处理中存在的强背景干扰问题,提出了一种基于人眼视觉特征和特征提取的复杂表面缺陷检测方法。受视觉注意机制的启发,人眼可以方便地从背景噪声中识别缺陷区域。引入改进的灰度调整和频率调谐显著性算法,结合膨胀和微分运算得到的显著区域掩模,消除背景噪声,提取缺陷区域。同时,采用方向特征匹配与融合算法增强方向特征,保留缺陷细节。测试图像由我们建立的检测系统捕获。实验结果表明,该方法能够完整地保留缺陷信息,并具有较高的提取效率和检测精度。
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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