2022
DOI: 10.1038/s41598-022-22264-3
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Alignment-invariant signal reality reconstruction in hyperspectral imaging using a deep convolutional neural network architecture

Abstract: The energy resolution in hyperspectral imaging techniques has always been an important matter in data interpretation. In many cases, spectral information is distorted by elements such as instruments’ broad optical transfer function, and electronic high frequency noises. In the past decades, advances in artificial intelligence methods have provided robust tools to better study sophisticated system artifacts in spectral data and take steps towards removing these artifacts from the experimentally obtained data. T… Show more

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References 81 publications
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