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A deep convolutional neural network to analyze position averaged convergent beam electron diffraction patterns

机译:深度卷积神经网络分析位置平均会聚光束电子衍射图案

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We establish a series of deep convolutional neural networks to automatically analyze position averaged convergent beam electron diffraction patterns. The networks first calibrate the zero-order disk size, center position, and rotation without the need for pretreating the data. With the aligned data, additional networks then measure the sample thickness and tilt. The performance of the network is explored as a function of a variety of variables including thickness, tilt, and dose. A methodology to explore the response of the neural network to various pattern features is also presented. Processing patterns at a rate of similar to 0.1 s/pattern, the network is shown to be orders of magnitude faster than a brute force method while maintaining accuracy. The approach is thus suitable for automatically processing big, 4D STEM data. We also discuss the generality of the method to other materials/orientations as well as a hybrid approach that combines the features of the neural network with least squares fitting for even more robust analysis. The source code is available at https://github.com/subangstrom/DeepDiffraction. (C) 2018 Elsevier B.V. All rights reserved.
机译:我们建立了一系列深度卷积神经网络,自动分析了位置平均会聚光束电子衍射图案。网络首先校准零级磁盘大小,中心位置和旋转,而无需预处理数据。通过对齐数据,额外的网络然后测量样品厚度和倾斜。网络的性能被探索为各种变量的函数,包括厚度,倾斜和剂量。还介绍了探索神经网络对各种模式特征的响应的方法。处理模式以类似于0.1 s /图案的速率,该网络被示出为比蛮力方法快的级比保持精度。因此,该方法适用于自动处理大,4D茎数据。我们还讨论了该方法的一般性到其他材料/方向以及混合方法,该方法将神经网络的特征与最小二乘拟合相结合,以便更加稳健地分析。源代码可在https://github.com/subangstrom/deepdiffraction中获得。 (c)2018 Elsevier B.v.保留所有权利。

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