A differential geometry-based method for detecting etching defects in high-density interconnect IC substrates

Yongxing Yu, Dan Huang, Hongcheng Zhou, Yueming Hu
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Abstract

With the increasing precision and complexity of high-density interconnect integrated circuit (IC) substrates, automated visual inspection encounters significant challenges in accurately detecting etching defects on metallographic substrate images. Factors such as grayscale variations, noise interference, and rich textures further complicate the process. To address this issue, a novel detection method based on differential geometry theory is proposed, encompassing defect detection between circuits and on circuits. Firstly, the variational Chan-Vese model and morphological closing operation are employed to obtain highly accurate substrate segmentation images. For defect detection between substrate circuits, contour regions between circuits are extracted by differencing the original image with the segmented image. Next, a lightweight compressed MobileNet (CMNet) network is constructed using depth-weighted compression to rapidly identify defect regions between circuits. For defects on substrate circuits, the contour of the segmented image is utilized to determine candidate regions of etching defects by evaluating abrupt changes in angles between adjacent contour points. Subsequently, the proposed discrete curvature calculation method based on the Frenet frame of differential geometry theory is employed to detect and measure defect candidates on the circuits. Experimental results demonstrate the effectiveness of the proposed method in detecting etching defects, outperforming other advanced techniques in screening and identifying defect regions.
基于差分几何的高密度互连集成电路衬底蚀刻缺陷检测方法
随着高密度互连集成电路 (IC) 基板的精度和复杂性不断提高,自动视觉检测在准确检测金相基板图像上的蚀刻缺陷方面遇到了巨大挑战。灰度变化、噪声干扰和丰富的纹理等因素使检测过程更加复杂。为解决这一问题,我们提出了一种基于微分几何理论的新型检测方法,包括电路之间和电路上的缺陷检测。首先,利用变分 Chan-Vese 模型和形态学闭合操作,获得高精度的基板分割图像。在基板电路之间的缺陷检测中,通过对原始图像和分割图像进行差分,提取电路之间的轮廓区域。然后,利用深度加权压缩技术构建轻量级压缩移动网络(CMNet),以快速识别电路之间的缺陷区域。对于基板电路上的缺陷,通过评估相邻轮廓点之间角度的突然变化,利用分割图像的轮廓来确定蚀刻缺陷的候选区域。随后,利用基于微分几何理论 Frenet 框架的离散曲率计算方法来检测和测量电路上的候选缺陷。实验结果表明,所提出的方法在检测蚀刻缺陷方面非常有效,在筛选和识别缺陷区域方面优于其他先进技术。
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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