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Denoising scanning tunneling microscopy images of graphene with supervised machine learning
被引:10
|作者:
Joucken, Frederic
[1
]
Davenport, John L.
[2
]
Ge, Zhehao
[2
]
Quezada-Lopez, Eberth A.
[2
]
Taniguchi, Takashi
[3
]
Watanabe, Kenji
[4
]
Velasco Jr, Jairo
[2
]
Lagoute, Jerome
[5
]
Kaindl, Robert A.
[1
]
机构:
[1] Arizona State Univ, Dept Phys, Tempe, AZ 85287 USA
[2] Univ Calif Santa Cruz, Dept Phys, Santa Cruz, CA 95064 USA
[3] Natl Inst Mat Sci, Int Ctr Mat Nanoarchitecton, 1-1 Namiki, Tsukuba 3050044, Japan
[4] Natl Inst Mat Sci, Res Ctr Funct Mat, 1-1 Namiki, Tsukuba 3050044, Japan
[5] Univ Paris Cite, Lab Mat & Phenomenes Quantiques, CNRS, F-75013 Paris, France
来源:
基金:
美国国家科学基金会;
关键词:
BROKEN-SYMMETRY;
SPECTROSCOPY;
D O I:
10.1103/PhysRevMaterials.6.123802
中图分类号:
T [工业技术];
学科分类号:
08 ;
摘要:
Machine learning (ML) methods are extraordinarily successful at denoising photographic images. The application of such denoising methods to scientific images is, however, often complicated by the difficulty in experimentally obtaining a suitable expected result as an input to training the ML network. Here, we propose and demonstrate a simulation-based approach to address this challenge for denoising atomic-scale scanning tunneling microscopy (STM) images, which consists of training a convolutional neural network on STM images simulated based on a tight-binding electronic structure model. As model materials, we consider graphite and its mono- and few-layer counterpart, graphene. With the goal of applying it to any experimental STM image obtained on graphitic systems, the network was trained on a set of simulated images with varying characteristics such as tip height, sample bias, atomic-scale defects, and nonlinear background. Denoising of both simulated and experimental images with this approach is compared to that of commonly used filters, revealing a superior outcome of the ML method in the removal of noise as well as scanning artifacts-including on features not simulated in the training set. An extension to larger STM images is further discussed, along with intrinsic limitations arising from training set biases that discourage application to fundamentally unknown surface features. The approach demonstrated here provides an effective way to remove noise and artifacts from typical STM images, yielding the basis for further feature discernment and automated processing.
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页数:11
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