基于图像识别的扫描电镜图像化学信息提取

Yuqing Jin, T. Kozawa, Kota Aoki, Tomoya Nakamura, Yasushi Makihara, Yasushi Yagi
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引用次数: 0

摘要

随着波长为13.5 nm的极紫外(EUV)光源给半导体行业带来光刻技术的发展,传统的抗蚀剂材料面临挑战。在开发抗蚀剂材料或发现新型抗蚀剂的过程中,一个重要的问题是抗蚀剂图案印刷过程中涉及的众多参数会导致缺陷的产生。同时,抗蚀剂材料和工艺中固有的化学变化导致了随机缺陷。此外,随着特征尺度的不断缩小,抗蚀剂材料和工艺中固有的化学变化所导致的随机缺陷也越来越显著。因此,有缺陷的模式数据的数量远远大于没有缺陷的模式数据。然而,通过利用图案失效中包含的信息,可以调整化学参数以提高抗蚀剂分辨率。本研究提出了一种新的方法,通过拟合带有缺陷的线空图案的实验扫描电子显微镜(SEM)图像与模拟图像,来评估带有缺陷的抗蚀剂图案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Chemical information extraction from scanning electron microscopy images on the basis of image recognition
Traditional resist materials have faced challenges as the extreme ultraviolet (EUV) light source with a wavelength of 13.5 nm brought the evolution of lithography to the semiconductor industry. A significant issue in the development of resist materials or the discovery of new type resists is that numerous parameters involved in the resist pattern printing process cause the generation of defects. Meanwhile, the inherent chemical variation in resist materials and processes causes the stochastic defects. In addition, the stochastic defects caused by the inherent chemical variation in resist materials and processes become increasingly significant as feature scales continue to shrink. Consequently, the number of pattern data with failures is much greater than those without defects. However, by utilizing the information contained in pattern failures, chemical parameters can be adjusted to improve resist resolution. In this study, a new method is proposed for evaluating resist patterns with defects by fitting the experimental scanning electronic microscopy (SEM) images of line-and-space patterns with defects to simulated images.
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