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Printed circuit board defect detection using mathematical morphology and MATLAB image processing tools

机译:使用数学形态学和MATLAB图像处理工具进行印刷电路板缺陷检测

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various concentrated work on detection of defects on printed circuit boards (PCBs) have been done, but it is also crucial to classify these defects in order to analyze and identify the root causes of the defects. This project is aimed in detecting and classifying the defects on bare single layer PCBs by introducing a hybrid algorithm by combining the research done by Heriansyah et al [1] and Khalid [2]. This project proposes a PCB defect detection and classification system using a morphological image segmentation algorithm [1] and simple the image processing theories [2]. Based on initial studies, some PCB defects can only exist in certain groups. Thus, it is obvious that the image processing algorithm could be improved by applying a segmentation exercise. This project uses template and test images of single layer, bare, grayscale computer generated PCBs. The research improves Khalid [2] work by increasing the number of defect categories from 5 to 7, with each category classifying a minimum of 1 to a maximum 4 different types of defects and a total of 13 out of 14 defects were classified.
机译:已经完成了各种有关检测印刷电路板(PCB)缺陷的集中工作,但是对这些缺陷进行分类以分析和确定缺陷的根本原因也至关重要。该项目旨在通过结合Heriansyah等人[1]和Khalid [2]所做的研究,引入一种混合算法,以检测裸露的单层PCB上的缺陷并对其进行分类。该项目提出了一种使用形态学图像分割算法[1]和简单的图像处理理论[2]的PCB缺陷检测和分类系统。根据初步研究,某些PCB缺陷只能在某些组中存在。因此,很明显可以通过应用分割练习来改善图像处理算法。该项目使用单层,裸露,灰度计算机生成的PCB的模板和测试图像。该研究通过将缺陷类别的数量从5个增加到7个来改进Khalid [2]的工作,每个类别将最少1种缺陷分类为最多4种不同类型的缺陷,总共对14种缺陷中的13种进行了分类。

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