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首页> 外文期刊>Carbon: An International Journal Sponsored by the American Carbon Society >A deep learning approach for determining the chiral indices of carbon nanotubes from high-resolution transmission electron microscopy images
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A deep learning approach for determining the chiral indices of carbon nanotubes from high-resolution transmission electron microscopy images

机译:一种深入学习方法,用于确定高分辨率透射电子显微镜图像的碳纳米管的手性指数

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摘要

Chiral indices determine important properties of carbon nanotubes (CNTs). Unfortunately, their determination from high-resolution transmission electron microscopy (HRTEM) images, the most accurate method for assigning chirality, is a tedious task. We develop a Convolutional Neural Network that automatizes this process. A large and realistic training data set of CNT images is obtained by means of atomistic computer simulations coupled with the multi-slice approach for image generation. In most cases, results of the automated assignment are in excellent agreement with manual classification, and the origin of failures is identified. The current approach, which combines HRTEM imaging and deep learning algorithms allows the analysis of a statistically significant number of HRTEM images of carbon nanotubes, paving the way for robust estimates of experimental chiral distributions. (C) 2020 Elsevier Ltd. All rights reserved.
机译:手性指数决定了碳纳米管(CNT)的重要特性。 不幸的是,他们从高分辨率透射电子显微镜(HRTEM)图像中的确定,分配手性的最准确的方法,是一个繁琐的任务。 我们开发了一种自动化此过程的卷积神经网络。 通过与图像生成的多切片方法耦合的原子计算机模拟来获得CNT图像的大型和现实训练数据集。 在大多数情况下,自动分配的结果与手动分类非常一致,识别出故障的起源。 结合HRTEM成像和深度学习算法的当前方法允许分析碳纳米管的统计上大量的HRTEM图像,为实验性手性分布的稳健估计铺平了途径。 (c)2020 elestvier有限公司保留所有权利。

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