在微电子学 TEM-ASTAR 分析中应用新型局部自动 PCA 算法进行衍射图样去噪。

IF 2.1 3区 工程技术 Q2 MICROSCOPY Ultramicroscopy Pub Date : 2024-10-01 DOI:10.1016/j.ultramic.2024.114059
Tony Printemps, Karen Dabertrand, Jérémy Vives, Alexia Valery
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引用次数: 0

摘要

本文介绍了一种用于 TEM-ASTAR™ 衍射图样 (DP) 数据集的新型去噪方法,称为 LAT-PCA(局部自动阈值-主成分分析)。这种方法将 4D 数据集(2D DP 的 2D 地图)划分为局部窗口,从而增强了既定的 PCA 算法。在这些窗口内,PCA 会确定物理信号主要存在于高阶主成分中的基础。通过阈值化低阶成分,该方法在保留 DPs 基本特征的同时有效地减少了噪音。该方法的局部性侧重于小窗口,提高了计算效率,并与 ASTAR 中晶体学晶粒信号的局部性相一致。该方法的自动方面采用了理论上的纯噪声分布(即马琴科-帕斯图尔分布)来设定一个阈值,超过该阈值的成分大多是噪声。LAT-PCA 方法大大减少了采集和后处理时间。有了去噪数据,为精确的相图和晶粒取向选择正确的参数就变得更加简单,从而促进了稳健的定量晶粒分析。在硅锗碳样品上进行的实验验证了该方法的有效性。样品在不同的采集时间下进行分析,以产生高信噪比参考数据集和低信噪比测试数据集。LAT-PCA 算法在测试数据集上的去噪结果与参考数据集进行了比对,结果表明,LAT-PCA 算法有显著的改进,而且非常可靠。总之,LAT-PCA 是对 TEM DP 数据集进行去噪的有效自动解决方案。它对不同噪声水平的适应性和局部处理能力使其成为提高数据集质量、减少数据采集和分析所需时间的重要工具。这种方法可以最大限度地缩短采集时间,节省显微镜的使用时间,减少样品漂移和劣化,从而以更少的形变伪影实现更准确的表征。
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Application of a novel local and automatic PCA algorithm for diffraction pattern denoising in TEM-ASTAR analysis in microelectronics.

This paper introduces a novel denoising method for TEM-ASTAR™ Diffraction Pattern (DP) datasets, termed LAT-PCA (Local Automatic Thresholding - Principal Component Analysis). This approach enhances the established PCA algorithm by partitioning the 4D dataset (a 2D map of 2D DPs) into localized windows. Within these windows, PCA identifies a basis where the physical signal predominantly resides in the higher-order principal components. By thresholding lower-order components, the method effectively reduces noise while retaining the essential features of the DPs. The locality of the approach, focusing on small windows, enhances computational efficiency and aligns with the localized nature of the crystallographic grain signals in ASTAR. The automatic aspect of the method employs a theoretical pure noise distribution, i.e. a Marchenko-Pastur Distribution, to set a threshold, beyond which the components are mostly noise. The LAT-PCA method offers significant reductions in acquisition and post-processing times. With denoised data, selecting the correct parameters for accurate phase maps and grain orientations becomes more straightforward, facilitating robust quantitative grain analysis. Experiments performed on a silicon-germanium-carbon sample validate the method's efficacy. The sample was analyzed with varying acquisition times to produce a high signal-to-noise ratio reference dataset and a lower ratio test dataset. The LAT-PCA algorithm's denoising results on the test dataset were benchmarked against the reference, demonstrating considerable improvements and reliability. In summary, LAT-PCA is an effective, automatic solution for denoising TEM DP datasets. Its adaptability to different noise levels and local processing capability makes it a valuable tool for enhancing dataset quality and reducing the time required for data acquisition and analysis. This method can minimize acquisition time, conserve microscope usage, and reduce sample drift and deterioration, leading to more accurate characterizations with fewer deformation artifacts.

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来源期刊
Ultramicroscopy
Ultramicroscopy 工程技术-显微镜技术
CiteScore
4.60
自引率
13.60%
发文量
117
审稿时长
5.3 months
期刊介绍: Ultramicroscopy is an established journal that provides a forum for the publication of original research papers, invited reviews and rapid communications. The scope of Ultramicroscopy is to describe advances in instrumentation, methods and theory related to all modes of microscopical imaging, diffraction and spectroscopy in the life and physical sciences.
期刊最新文献
Exploring deep learning models for 4D-STEM-DPC data processing. Application of a novel local and automatic PCA algorithm for diffraction pattern denoising in TEM-ASTAR analysis in microelectronics. A simple and intuitive model for long-range 3D potential distributions of in-operando TEM-samples: Comparison with electron holographic tomography. EBSD and TKD analyses using inverted contrast Kikuchi diffraction patterns and alternative measurement geometries On the temporal transfer function in STEM imaging from finite detector response time
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