基于小数据深度学习的晶圆图缺陷分类

Kudrov Maksim, Bukharov Kirill, Zakharov Eduard, Grishin Nikita, Bazzaev Aleksandr, Lozhkina Arina, S. Vladislav, Makhotkin Daniil, Krivoshein Nikolay
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引用次数: 24

摘要

本文试图解决缺陷分类问题,以实现缺陷检测结果处理的自动化。提出了一种基于深度卷积神经网络(DCNN)的半导体晶圆缺陷模式识别算法。为了对模型进行训练,建立并应用了一个复合训练数据集。它的基础由合成数据和额外的少量实验数据组成,包括大约20个例子。在一个开放数据集WM-811K上对工作进行了验证。所得分类准确率约为87.8%。从实用的角度来看,这是一个令人满意的结果。所开发的算法既可用于半导体晶圆生产中的数据分析软件系统,也可用于电子探伤仪的单独软件模块。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Wafer Maps Defect Based on Deep Learning Methods With Small Amount of Data
This paper attempts to solve the problem of defect classification for the purpose of automation of the processing of flaw detection results. Article proposes an algorithm based on deep convolutional neural networks (DCNN) for recognizing patterns of defects in semiconductor wafers. In order to train the model, a composite training data set was created and applied. Its basis consists of synthetic data and an extra small amount of experimental data including about 20 examples. Verification of the work was carried out on an open data set WM-811K. The resulting classification accuracy is about 87.8%. This is a satisfactory result from a practical point of view. The developed algorithms can be used both in software systems for data analysis in the production of semiconductor wafers, as well as part of separate software modules for electronic flaw detectors.
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