关于基于capsnet的晶圆图缺陷模式分类的说明

Itsuki Fujita, Yoshikazu Nagamura, M. Arai, S. Fukumoto
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引用次数: 2

摘要

晶圆图缺陷模式的分类对于监控系统缺陷的发生和进一步协助制造过程中系统缺陷的根本原因分析具有重要意义。本研究开发了基于capsnet的晶圆图缺陷模式分类器。CapsNet是卷积神经网络的一种变体,它以向量而不是标量的形式提取图像的特征,有望在输入图像中特征的位置、角度和尺度的波动下更准确地提取特征。实验结果表明,通过两阶段(检测器和分类器)相结合的方法,该方法在WM-811K真实晶圆图数据集上对8个类别的分类精度比以往的方法有所提高,特别是在“Donut”和“Scratch”这两个类别上,前者难以准确分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Note on CapsNet-Based Wafer Map Defect Pattern Classification
Classification of wafer map defect patterns is important to monitor occurrence and further to assist root cause analysis of manufacturing-process-induced systematic defects. In this study we develop CapsNet-based wafer map defect pattern classifier. CapsNet is a variant of convolutional neural network, which extract features of images as vectors, not as scalars, and is expected to extract features more accurately under fluctuations of locations, angles, and scales of features in input images. Experimental results indicate that, by combining 2-stage (detector and classifier) approach, the proposed scheme shows higher accuracy on WM-811K real wafer map dataset for 8 categories in comparison to the previous work, on average and especially on the categories “Donut” and “Scratch,” which are difficult to accurately categorize by the previous work.
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