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Machine Vision-Based Defect Detection in IC Images Using the Partial Information Correlation Coefficient

机译:使用部分信息相关系数的IC图像中基于机器视觉的缺陷检测

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摘要

The normalized cross correlation coefficient is a prevalent pattern-matching algorithm in machine vision for industrial inspections. Despite its common use, there are problems with practical applications. For instance, false alarms occur since it is highly sensitive to environmental changes or inspection equipment, not to mention it requires complex calculations. This paper proposes the partial information correlation coefficient (PICC) method to improve the traditional normalized cross correlation coefficient (TNCCC). The PICC uses the technique of significant points to calculate the correlation coefficient. An experiment is also conducted to demonstrate the application through many image samples from the IC industry, such as PCBs, BGAs, and ICs. The results show that the PICC can effectively reduce false alarms in defect detection.
机译:归一化互相关系数是机器视觉中用于工业检查的一种流行的模式匹配算法。尽管具有通用性,但是在实际应用中仍然存在问题。例如,由于误报对环境变化或检查设备高度敏感,因此会发生误报,更不用说它需要复杂的计算了。为了提高传统的归一化互相关系数(TNCCC),本文提出了部分信息相关系数(PICC)方法。 PICC使用有效点技术来计算相关系数。还进行了一项实验,以通过来自IC行业的许多图像样本(例如PCB,BGA和IC)演示该应用。结果表明,PICC可以有效减少缺陷检测中的误报。

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