Occurrence Prediction of Dislocation Regions in Photoluminescence Image of Multicrystalline Silicon Wafers Using Transfer Learning of Convolutional Neural Network

H. Kudo, T. Matsumoto, K. Kutsukake, N. Usami
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引用次数: 2

Abstract

In this paper, we evaluate a prediction method of regions including dislocation clusters which are crystallographic defects in a photoluminescence (PL) image of multicrystalline silicon wafers. We applied a method of a transfer learning of the convolutional neural network to solve this task. For an input of a sub-region image of a whole PL image, the network outputs the dislocation cluster regions are included in the upper wafer image or not. A network learned using image in lower wafers of the bottom of dislocation clusters as positive examples. We experimented under three conditions as negative examples; image of some depth wafer, randomly selected images, and both images. We examined performances of accuracies and Youden’s J statistics under 2 cases; predictions of occurrences of dislocation clusters at 10 upper wafer or 20 upper wafer. Results present that values of accuracies and values of Youden’s J are not so high, but they are higher results than ones of bag of features (visual words) method. For our purpose to find occurrences dislocation clusters in upper wafers from the input wafer, we obtained results that randomly select condition as negative examples is appropriate for 10 upper wafers prediction, since its results are better than other negative examples conditions, consistently. key words: prediction, transfer learning, convolutional neural network
基于卷积神经网络迁移学习的多晶硅片光致发光图像中位错区出现预测
本文研究了多晶硅片光致发光(PL)图像中包含位错团簇的晶体缺陷区域的预测方法。我们采用卷积神经网络的迁移学习方法来解决这个问题。对于整个PL图像的子区域图像的输入,网络输出位错簇区域是否包含在上部晶圆图像中。利用位错团簇底部下晶片的图像作为正例进行网络学习。我们在三种情况下做了反例实验;某些深度的图像,随机选择的图像,以及两者的图像。我们在两种情况下检验了准确率和Youden 's J统计量的性能;位错团簇出现在10或20上晶圆的预测。结果表明,该方法的准确率和Youden’s J值都不高,但均高于特征袋(视觉词)法。为了从输入晶圆中找出上晶圆中出现的位错团簇,我们得到的结果是随机选择条件作为负例适用于10个上晶圆的预测,因为其结果优于其他负例条件,并且一致。关键词:预测,迁移学习,卷积神经网络
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