Wafer maps defect recognition based on transfer learning of handwritten pre-training network

Shouhong Chen, Yuxuan Zhang, Mulan Yi, Jun Ma, Xingna Hou
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引用次数: 2

Abstract

A new method of defect recognition based on handwriting classification pre-training transfer learning is proposed for efficient defect recognition of wafer maps. Using deep learning can better identify wafer map defects, but one problem that a large amount of training data is needed to build a deep network model that can effectively recognize complex images. Another problem is the uneven distribution of the number of defect types in the wafer map during the actual manufacturing process. To solve these two problems, this paper uses the deep convolutional neural network trained in the MNIST dataset for handwriting classification as a pre-trained network for transfer learning. Since the MNIST data set contains simple basic patterns such as lines and circles that are common in the defect mode of wafer maps, the training of a deep network requires fewer data. Moreover, transfer learning reduces the amount of data for deep network training by transferring the parameters of the pre-trained network to the pattern recognition and classification model of wafer maps. This method uses a tenfold cross-validation method to verify multiple sets of different size subsets of the WM811K data set. The average recognition accuracy of each group of 10 experiments is above 94.9%. It has good recognition effect.
基于迁移学习的手写体预训练网络晶圆图缺陷识别
提出了一种基于手写体分类预训练迁移学习的缺陷识别方法,对晶圆图进行有效的缺陷识别。利用深度学习可以更好地识别晶圆图缺陷,但一个问题是需要大量的训练数据来构建能够有效识别复杂图像的深度网络模型。另一个问题是在实际制造过程中,晶圆图中缺陷类型的数量分布不均匀。为了解决这两个问题,本文使用MNIST数据集训练的深度卷积神经网络作为迁移学习的预训练网络。由于MNIST数据集包含简单的基本模式,例如在晶圆图的缺陷模式中常见的线和圆,因此深度网络的训练需要更少的数据。此外,迁移学习通过将预训练网络的参数转移到晶圆图的模式识别和分类模型中,减少了深度网络训练的数据量。该方法使用十倍交叉验证方法来验证WM811K数据集的不同大小子集的多个集。每组10次实验的平均识别准确率均在94.9%以上。具有良好的识别效果。
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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