阈值算法在印刷电路板检测系统中的性能测量

I. Ibrahim, S. Bakar, M. Mokji, K. Khalil, Z. Yusof, Jameel Mukred, Z. Ibrahim, M. S. Mohamad, W. K. W. Ahmad
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引用次数: 4

摘要

众所周知,灰度图像分割需要阈值分割算法。在本文中,使用单色电荷耦合器件相机捕获实际印刷电路板,并产生由灰度格式的前景和背景物体组成的图像。为了正确区分这两种属性,应用了几种阈值分割算法。然后,采用误分类误差度量来评价这些阈值算法的性能。该方法给出了错误地分配给前景的背景像素和错误地分配给背景像素的前景像素的百分比的信息。在选择了最佳阈值算法后,中值滤波和缺陷分类算法可分别用于去除生成图像中的小噪声和对印刷电路板上发生的缺陷进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Measurement of Thresholding Algorithms in Printed Circuit Board Inspection System
It is well-known that thresholding algorithm is needed by gray-scale images in segmentation operation. In this paper, real printed circuit boards used are captured using a monochrome charged coupled device camera and produced images consisting of foreground and background objects in gray-scale format. In order to correctly differentiate these two kinds of attributes, several of thresholding algorithms are applied. Then, misclassification error measure has been employed to evaluate the performances of these thresholding algorithms. This method gives information on how many percentages of background pixels wrongly assigned to foreground, and foreground pixels wrongly assigned to background pixels. As the best thresholding algorithm has been chosen, median filtering and the proposed defect classification algorithm can be applied to remove small noise in resultant images and classify the defects occurred on the printed circuit boards, respectively.
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