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3D深度学习实现二维材料的精确层映射。

3D Deep Learning Enables Accurate Layer Mapping of 2D Materials.

作者信息

Dong Xingchen, Li Hongwei, Jiang Zhutong, Grünleitner Theresa, Güler İnci, Dong Jie, Wang Kun, Köhler Michael H, Jakobi Martin, Menze Bjoern H, Yetisen Ali K, Sharp Ian D, Stier Andreas V, Finley Jonathan J, Koch Alexander W

机构信息

Institute for Measurement Systems and Sensor Technology, Department of Electrical and Computer Engineering, Technical University of Munich, 80333 Munich Germany.

Department of Computer Science, Technical University of Munich, 85748 Garching, Germany.

出版信息

ACS Nano. 2021 Feb 23;15(2):3139-3151. doi: 10.1021/acsnano.0c09685. Epub 2021 Jan 19.

DOI:10.1021/acsnano.0c09685
PMID:33464815
Abstract

Layered, two-dimensional (2D) materials are promising for next-generation photonics devices. Typically, the thickness of mechanically cleaved flakes and chemical vapor deposited thin films is distributed randomly over a large area, where accurate identification of atomic layer numbers is time-consuming. Hyperspectral imaging microscopy yields spectral information that can be used to distinguish the spectral differences of varying thickness specimens. However, its spatial resolution is relatively low due to the spectral imaging nature. In this work, we present a 3D deep learning solution called DALM (deep-learning-enabled atomic layer mapping) to merge hyperspectral reflection images (high spectral resolution) and RGB images (high spatial resolution) for the identification and segmentation of MoS flakes with mono-, bi-, tri-, and multilayer thicknesses. DALM is trained on a small set of labeled images, automatically predicts layer distributions and segments individual layers with high accuracy, and shows robustness to illumination and contrast variations. Further, we show its advantageous performance over the state-of-the-art model that is solely based on RGB microscope images. This AI-supported technique with high speed, spatial resolution, and accuracy allows for reliable computer-aided identification of atomically thin materials.

摘要

层状二维(2D)材料在下一代光子器件方面具有广阔前景。通常,通过机械劈裂薄片和化学气相沉积制备的薄膜厚度在大面积上随机分布,准确识别原子层数耗时较长。高光谱成像显微镜可产生光谱信息,用于区分不同厚度样本的光谱差异。然而,由于其光谱成像特性,其空间分辨率相对较低。在这项工作中,我们提出了一种名为DALM(深度学习原子层映射)的三维深度学习解决方案,用于融合高光谱反射图像(高光谱分辨率)和RGB图像(高空间分辨率),以识别和分割具有单、双、三、多层厚度的MoS薄片。DALM在一小部分标记图像上进行训练,能自动预测层分布并高精度分割各层,且对光照和对比度变化具有鲁棒性。此外,我们展示了它相对于仅基于RGB显微镜图像的现有模型的优势性能。这种具有高速、空间分辨率和准确性的人工智能支持技术,能够实现对原子级薄材料的可靠计算机辅助识别。

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