基于图像先验信息的贴片缺陷检测算法

Zhang Gan, Ma Yao-yao, Zhang Chun-long, Li Wei, Sun Zhe, Tan Yu-zhi
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引用次数: 2

摘要

贴片检测是SMT熔接后电路板检测的重要环节。国内的补丁识别方法存在算法思想繁琐、计算量大、对硬件要求高、鲁棒性差等缺点。本文针对松香接头缺陷、缺锡、焊料过量、表面缺陷、错件、墓碑、偏移等缺陷的检测,提出了利用先验信息进行图像定位的思路。结合目标区域颜色分析、区域连通域算法思想,分斑块图像定位与尺寸计算、斑块区域颜色分析、斑块类型识别三步实现了斑块的快速检测。实验证明,该方法具有特征提取方便、拍摄条件干扰小、鲁棒性好、阈值设置方便、缺陷识别率高、算法鲁棒等优点。在MATLAB平台上,本研究各斑块的正确识别率为94% ~ 95%,误报率为4% ~ 5%,误报率为1%,平均耗时41ms。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SMT patch defect detection algorithm based on prior information of image
Patch testing is an important part in circuit board testing after SMT melted welding. Domestic patch recognition methods exist many shortcomings, such as the cumbersome algorithm thought, large calculation, the high requirement of hardware, poor robustness. In this paper, aiming at detecting the defects of rosin joint, lack of tin, excess solder, surface defect, wrong parts, tombstone, offset, a thought that using priori information for image positioning was used. In combination with target area color analysis, area connected domain algorithm thought, rapid detection of the patch was achieved in three steps: patch image positioning and size calculation, patch regional color analysis, patch type identification. The experiment has proved that this method had many advantages: convenience of feature extraction, the low interference of the shooting condition, well robustness, the convenience of threshold setting, high defect recognition rate, robust algorithm. In MATLAB platform, the correct recognized rate of of the patches in this study was 94%∼95%, false alarmrate was 4%∼5%, false negative alarm was 1%, the averaging time consuming was 41ms.
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