Enhancing performance of electron holography with mathematical and machine learning-based denoising techniques.

Satoshi Anada, Yuki Nomura, Kazuo Yamamoto
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Abstract

Electron holography is a useful tool for analyzing functional properties, such as electromagnetic fields and strains of materials and devices. The performance of electron holography is limited by the 'shot noise' inherent in electron micrographs (holograms), which are composed of a finite number of electrons. A promising approach for addressing this issue is to use mathematical and machine learning-based image-processing techniques for hologram denoising. With the advancement of information science, denoising methods have become capable of extracting signals that are completely buried in noise, and they are being applied to electron microscopy, including electron holography. However, these advanced denoising methods are complex and have many parameters to be tuned; therefore, it is necessary to understand their principles in depth and use them carefully. Herein, we present an overview of the principles and usage of sparse coding, the wavelet hidden Markov model and tensor decomposition, which have been applied to electron holography. We also present evaluation results for the denoising performance of these methods obtained through their application to simulated and experimentally recorded holograms. Our analysis, review and comparison of the methods clarify the impact of denoising on electron holography research.

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利用基于数学和机器学习的去噪技术增强电子全息术的性能。
电子全息是分析材料和器件的功能特性,如电磁场和应变的有用工具。电子全息术的性能受到电子显微图(全息图)中固有的“散粒噪声”的限制,电子显微图由有限数量的电子组成。解决这个问题的一个有前途的方法是使用基于数学和机器学习的图像处理技术进行全息图去噪。随着信息科学的进步,去噪方法已经能够提取完全被噪声淹没的信号,并且正在应用于电子全息摄影等电子显微镜。然而,这些先进的去噪方法是复杂的,有许多参数需要调整;因此,有必要深入了解它们的原理并仔细使用它们。本文综述了稀疏编码、小波隐马尔可夫模型和张量分解在电子全息成像中的应用。我们还通过对模拟全息图和实验记录全息图的应用,给出了这些方法去噪性能的评价结果。通过对各种方法的分析、回顾和比较,阐明了去噪对电子全息研究的影响。
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