Deep learning-based image quality adaptation for die-to-database defect inspection

被引:0
作者
Fukuda, Kosuke [1 ]
Ishikawa, Masayoshi [1 ]
Yoshida, Yasuhiro [1 ,2 ]
Fukaya, Kaoru [2 ]
Kagetani, Ryugo [2 ]
Shindo, Hiroyuki [2 ]
机构
[1] Hitachi Ltd, 7-1-1 Omika Cho, Hitachi, Ibaraki 3191292, Japan
[2] Hitachi High Tech Corp, 552-53 Shinko Cho, Hitachinaka, Ibaraki 3120005, Japan
来源
METROLOGY, INSPECTION, AND PROCESS CONTROL XXXVIII | 2024年 / 12955卷
关键词
Defect inspection; Image processing; Machine learning; Scanning electron microscope; Die-to-Database;
D O I
10.1117/12.3008799
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
While extreme ultraviolet lithography has contributed to sub-10nm microfabrication, there are concerns about stochastic defects. Thus, the process evaluation requires fast and precise inspection of entire wafers. To do this, large field-of-view (FoV) e-beam inspection has been introduced. However, large FoV inspection sometimes suffers from image degradations due to aberrations and/or charged wafers that cause false detections during image comparison inspection. To reduce these false detections, we developed a deep learning-based image adaptation method to reduce the difference between the reference image and degraded inspection image. Here, the adapter that simply minimizes the difference often falls into over-adaptation that eliminates the difference in defect characteristics and decreases detection sensitivity. To address this, we introduced a patch-wise blind-spot network (PwBSN) that recognizes only the image degradation by leveraging the property that the defect region is smaller than the image degradation region. Since the PwBSN can only use surrounding regions due to its architectural constraints, it only minimizes the difference in degradations except for defects smaller than patches. We applied this method to deep learning-based die-to-database defect inspection. The evaluation on SEM images showed that the proposed method detects only defects, while a conventional method detects both defects and image degradation regions.
引用
收藏
页数:10
相关论文
共 14 条
  • [1] Optuna: A Next-generation Hyperparameter Optimization Framework
    Akiba, Takuya
    Sano, Shotaro
    Yanase, Toshihiko
    Ohta, Takeru
    Koyama, Masanori
    [J]. KDD'19: PROCEEDINGS OF THE 25TH ACM SIGKDD INTERNATIONAL CONFERENCCE ON KNOWLEDGE DISCOVERY AND DATA MINING, 2019, : 2623 - 2631
  • [2] Bisschop P.D., 2019, Extreme Ultraviolet (EUV) Lithography X, SPIE, V10957, P37
  • [3] Bisschop P. D., 2018, Extreme Ultraviolet (EUV) Lithography IX, V10583, P350
  • [4] Fukuda K., 2022, Journal of Micro/Nanopatterning, Materials, and Metrology, V22
  • [5] Efficient Blind-Spot Neural Network Architecture for Image Denoising
    Honzatko, David
    Bigdeli, Siavash A.
    Turetken, Engin
    Dunbar, L. Andrea
    [J]. 2020 7TH SWISS CONFERENCE ON DATA SCIENCE, SDS, 2020, : 59 - 60
  • [6] Blur, Noise, and Compression Robust Generative Adversarial Networks
    Kaneko, Takuhiro
    Harada, Tatsuya
    [J]. 2021 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION, CVPR 2021, 2021, : 13574 - 13584
  • [7] Introduction of a die-to-database verification tool for the entire printed geometry of a die - Geometry verification system NGR2100 for DFM
    Kitamura, T
    Kubota, K
    Hasebe, T
    Sakai, F
    Nakazawa, S
    Vohra, N
    Yamamoto, M
    Inoue, M
    [J]. PHOTOMASK AND NEXT-GENERATION LITHOGRAPHY MASK TECHNOLOGY XII, PTS 1 AND 2, 2005, 5853 : 988 - 999
  • [8] Noise2Void-Learning Denoising from Single Noisy Images
    Krull, Alexander
    Buchholz, Tim-Oliver
    Jug, Florian
    [J]. 2019 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR 2019), 2019, : 2124 - 2132
  • [9] Laine S., 2019, Advances in Neural Information Processing Systems, P32
  • [10] Long J, 2015, PROC CVPR IEEE, P3431, DOI 10.1109/CVPR.2015.7298965