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Generation of artificial data sets to train convolutional neural networks for spectral unmixing

机译:生成人工数据集,以培训卷积神经网络的光谱解密

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摘要

This paper presents a method to generate training data for artificial neural networks for spectral unmixing. Therefor, only the spectra of the pure substances involved and, depending on the model used, a few spectra of mixed substances to determine the parameters are needed. With mixing models, which can also be used directly for spectral unmixing, large quantities of spectra can be generated for training. In contrast to the direct use of mixing models, where a spectrum per pure substance is used, this approach takes into account the spectrum variability by using different spectra of each pure substance. The property of artificial neural networks to learn significant features based on large amounts of data is exploited here.
机译:本文介绍了一种用于为光谱解混的人工神经网络生成培训数据的方法。 因此,只需要涉及纯物质的光谱,并且根据所用的模型,需要几种混合物质的光谱来确定参数。 使用混合型号,也可以直接用于光谱解密,可以产生大量光谱用于训练。 与直接使用混合模型相反,在使用每个纯物质的光谱的情况下,该方法通过使用每个纯物质的不同光谱来考虑光谱变异性。 在此利用人工神经网络学习大量数据的重要特征的性质被利用。

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