计量学
吞吐量
特征提取
计算机科学
鉴定(生物学)
过程(计算)
自动化
过程控制
临界尺寸
特征(语言学)
人工智能
半导体器件制造
图像处理
机器学习
工程类
图像(数学)
光学
电气工程
语言学
植物
机械工程
薄脆饼
物理
操作系统
哲学
电信
生物
无线
作者
Yan Guo,H. Pahlavani,Artem Khachaturiants,Khalid Elsayed,J. van de Laar,Erik Simons,Niranjan Saikumar,Hamed Sadeghian
摘要
Process control of advanced semiconductor nodes is not only pushing the limits of metrology equipment requirements in terms of resolution and throughput but also in terms of the richness of data to be extracted to enable engineers to finetune the process steps for increased yield. The move towards 3D structures requires extraction of critical dimension parameters from structures which can vary largely from layer to layer. For in-line process control, the necessary automation forces the development of layer and equipment-specific dedicated image processing algorithms. Similarly, with the increase in stochastic defects in the EUV era, detection of defects at the nm scale requires the identification of features captured in low resolution to meet the throughput requirements of HVM fabs, which can again lead to custom algorithm development. With the emergence of ML-based image processing methods, this process of algorithm development for both cases can be accelerated. In this work, we provide the general framework under which the images obtained from high-speed scanning probe microscopy-based systems can be used to train a network for either feature detection for parameter extraction or defect identification.
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