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Intelligent Identification of MoS2 Nanostructures with Hyperspectral Imaging by 3D-CNN

机译:基于3D-CNN的高光谱成像智能识别MoS2纳米结构

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摘要

Increasing attention has been paid to two-dimensional (2D) materials because of their superior performance and wafer-level synthesis methods. However, the large-area characterization, precision, intelligent automation, and high-efficiency detection of nanostructures for 2D materials have not yet reached an industrial level. Therefore, we use big data analysis and deep learning methods to develop a set of visible-light hyperspectral imaging technologies successfully for the automatic identification of few-layers MoS . For the classification algorithm, we propose deep neural network, one-dimensional (1D) convolutional neural network, and three-dimensional (3D) convolutional neural network (3D-CNN) models to explore the correlation between the accuracy of model recognition and the optical characteristics of few-layers MoS . The experimental results show that the 3D-CNN has better generalization capability than other classification models, and this model is applicable to the feature input of the spatial and spectral domains. Such a difference consists in previous versions of the present study without specific substrate, and images of different dynamic ranges on a section of the sample may be administered via the automatic shutter aperture. Therefore, adjusting the imaging quality under the same color contrast conditions is unnecessary, and the process of the conventional image is not used to achieve the maximum field of view recognition range of ~1.92 mm . The image resolution can reach ~100 nm and the detection time is 3 min per one image.
机译:由于二维材料(2D)的卓越性能和晶圆级合成方法,它们已引起越来越多的关注。但是,二维材料纳米结构的大面积表征,精度,智能自动化和高效检测尚未达到工业水平。因此,我们使用大数据分析和深度学习方法成功开发了一套可见光高光谱成像技术,用于自动识别几层MoS。对于分类算法,我们提出了深度神经网络,一维(1D)卷积神经网络和三维(3D)卷积神经网络(3D-CNN)模型,以探索模型识别的准确性与光学模型之间的相关性。 MoS的几层特征。实验结果表明3D-CNN具有比其他分类模型更好的泛化能力,并且该模型适用于空间和光谱域的特征输入。这种差异在于本研究的先前版本中没有特定的底物,并且可以通过自动快门光圈来管理样品一部分上不同动态范围的图像。因此,不需要在相同的颜色对比度条件下调整成像质量,并且不使用常规图像的处理来实现约1.92 mm的最大视野识别范围。图像分辨率可以达到〜100 nm,每张图像的检测时间为3分钟。

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