基于卷积神经网络的晶圆图分类双特征提取方法

Yang Yuan-Fu, Sun Min
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引用次数: 12

摘要

集成电路(IC)的单个组件非常小,其生产要求精度达到原子水平。集成电路是通过在由非常纯的半导体材料(通常是硅)制成的晶圆上创建电路结构,并使用导线将结构互连而制成的。为了生产高密度集成电路,晶圆表面必须非常干净,并且在前一个晶圆上制造的电路层应该对齐。如果不满足这些条件,高密度结构可能会坍塌。为了防止这种情况发生,晶圆片必须经常清洗,以避免污染,并去除前一个工艺步骤的残留物。然后,采用自动缺陷分类(ADC)技术,利用扫描电镜图像对晶圆表面缺陷进行识别和分类。然而,目前的ADC系统的分类性能较差。如果能对缺陷进行正确的分类,那么就能识别并最终解决制造问题的根源。机器学习技术已经被广泛接受,并且非常适合这种分类问题。本文提出了一种基于卷积神经网络的双特征提取方法。该模型使用Radon变换进行第一次特征提取,然后将该特征输入到卷积层进行第二次特征提取。在真实数据集上的实验验证了所提方法具有较高的缺陷分类性能,缺陷模式识别准确率高达98.5%,并验证了所提特征提取技术的有效性。
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Double Feature Extraction Method for Wafer Map Classification Based on Convolution Neural Network
The individual components of an integrated circuit (IC) are extremely small and its production demands precision at an atomic level. ICs are made by creating circuit structures on a wafer made out of very pure semiconducting material, typically silicon, and interconnecting the structures using wires. In order to produce high density IC, the wafer surface must be extremely clean and the circuit layers fabricated on the previous wafer should be aligned. If these conditions are not satisfied, the high density structure may collapse.To prevent this from happening, the wafers must be constantly cleaned to avoid contamination, and to remove the left-over of the previous process steps. Then, automatic defect classification (ADC) is used to identify and classify wafer surface defects using scanning electron microscope images. However, the classification performance of current ADC systems is poor. If the defects could be classified correctly, then the root of the fabrication problem can be recognized and eventually resolved.Machine learning techniques have been widely accepted and are well suited for such classification problems. In this paper, we propose double feature extraction method based on convolution neural network. The proposed model uses the Radon transform for the first feature extraction, and then input this feature into the convolution layer for the second feature extraction. Experiments with real-world data set verified that the proposed method achieves high defect classification performance, defect pattern recognition accuracy up to 98.5%, and we confirmed the effectiveness of the proposed feature extraction technique.
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