PCB Image Defects Detection by Artificial Neural Networks and Resistance Analysis

Roman Melnyk, Vitalii Vorobii
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引用次数: 0

Abstract

The approach contains the sequence of algorithms and formulas for image processing. They are single-layer neural networks, thinning, clustering, mathematical image comparison, and measurements of the trace length and width. All these procedures solve the task of selection and separation of the main objects in the printed circuit board: contacts, traces, and defects. The calculated features connect the conductance resistance of traces with the characteristics of defects. Imposing a tolerance on the distributed or concentrated changes of resistance it is possible to mark the defective and suspicious printed circuit boards.
利用人工神经网络和电阻分析检测 PCB 图像缺陷
该方法包含一系列图像处理算法和公式。它们是单层神经网络、减薄、聚类、数学图像比较以及痕迹长度和宽度测量。所有这些程序都解决了选择和分离印刷电路板中主要对象(触点、迹线和缺陷)的任务。计算出的特征将迹线的传导电阻与缺陷的特征联系起来。通过对分布或集中的电阻变化施加一定的公差,可以标记出有缺陷和可疑的印刷电路板。
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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