一种利用电化学迁移模式识别和估计印刷电路板中离子污染的自动视觉系统

H. Villanueva, M. Mena, P. Naval
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引用次数: 1

摘要

电子产品中离子污染的检测和评估是重要的,通过检测原因和防止电化学迁移(ECM)等失效机制来保证制造质量。然而,这种测试需要昂贵的专用设备。本文提出了一种低成本、自动的、基于视觉的方法,该方法通过分析ECM故障的光学显微镜图像的形状和颜色特征来确定印刷电路板的离子污染特征。采用10- 50ppm的NaCl和Na2SO4污染溶液,分10步进行水滴试验,获得铜枝晶图像。采用阈值法和连通成分分析法对短枝进行分割。该方法使用了三种类型的特征:全局和局部形状特征以及颜色特征。对ReliefF和基于关联的特征选择(Correlation-based feature selection, CFS)两种特征选择方法进行了测试,以衡量特征质量并确定最佳特征子集。使用的预测模型是特征加权k近邻。研究发现,与氯化钠相比,硫酸钠污染产生的铜枝晶更大、密度更大。增加污染物的量也增加了图案的密度。在较高的硫酸钠污染水平下,树突往往有红色的尖端,而在氯化钠污染下,树枝形状从明确的外观转变为“丝状”外观。该系统在仅使用8个描述符的情况下,区分两种污染物的准确率为97.3%。该系统还能够区分五种紧密间隔的污染物水平,氯化钠和硫酸钠的准确率分别为63.38%和57.14%。与全局形状特征相比,以前工作中没有使用的局部形状特征通常更有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An automatic visual system to identify and estimate ionic contamination in printed circuit boards using electrochemical migration patterns
Detection and estimation of ionic contamination in electronics is important, in order to ensure manufacturing quality by detecting the cause and preventing failure mechanisms such as electrochemical migration (ECM). However, such tests require expensive, specialized equipment. This paper proposes a low-cost, automatic, visual-based method, in which the ionic contamination profile of a printed circuit board is determined through the analysis of shape and color features of optical microscope images of ECM failures. Images of copper dendrites were acquired through the water drop test using solutions contaminated with NaCl and Na2SO4 from 10-50 ppm, in steps of 10. Thresholding and connected component analysis were used to segment the shorting dendrite. The method used three types of features: global and local shape features, and color features. Two feature selection methods, ReliefF and Correlation-based Feature Selection (CFS) were also tested to measure feature quality and to determine the best feature subsets. The predictive model used was feature-weighted k-nearest neighbor. The study determined that copper dendrites produced with sodium sulfate contaminant were larger and denser compared to sodium chloride. Increasing the amount of contaminant also increased the density of the pattern. At higher sodium sulfate contamination levels, dendrites tended to have reddish tips, while with sodium chloride, branch shapes transitioned from a well-defined appearance to a “stringy” appearance. The system was able to distinguish between the two contaminants at 97.3%, while using only eight descriptors. The system was also able to distinguish between five closely-spaced contaminant levels at 63.38% and 57.14% accuracy for sodium chloride and sodium sulfate respectively. Local shape features, which were not used in previous work, were found to be generally more useful compared to global shape features.
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