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Decoding crystallography from high-resolution electron imaging and diffraction datasets with deep learning

机译:从高分辨率电子成像和深度学习的衍射数据集解码晶体学

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While machine learning has been making enormous strides in many technical areas, it is still massively underused in transmission electron microscopy. To address this, a convolutional neural network model was developed for reliable classification of crystal structures from small numbers of electron images and diffraction patterns with no preferred orientation. Diffraction data containing 571,340 individual crystals divided among seven families, 32 genera, and 230 space groups were used to train the network. Despite the highly imbalanced dataset, the network narrows down the space groups to the top two with over 70% confidence in the worst case and up to 95% in the common cases. As examples, we benchmarked against alloys to two-dimensional materials to cross-validate our deep-learning model against high-resolution transmission electron images and diffraction patterns. We present this result both as a research tool and deep-learning application for diffraction analysis.
机译:虽然机器学习在许多技术领域做出了巨大的进步,但它在透射电子显微镜中仍然大量耗尽。为了解决这一点,开发了一种卷积神经网络模型,用于从少量电子图像和没有优选方向的少量电子图像和衍射图案的可靠分类。含有571,340个单个晶体的衍射数据除以七个家庭,32个属和230个空间组,用于培训网络。尽管数据集具有高度不平衡的数据集,但网络缩小了空间组到前两个,在最坏情况下有70%的置信度超过70%,在常见情况下高达95%。作为示例,我们基准与二维材料的合金基准测试,以交叉验证我们对高分辨率透射电子图像和衍射图案的深度学习模型。我们展示了这一结果作为研究工具和衍射分析的深度学习应用。

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