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Optical determination of material abundances by using neural networks for the derivation of spectral filters

机译:通过使用神经网络对光谱滤光镜进行导数来光学测定材料的丰度

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Using appropriately designed spectral filters allows to optically determine material abundances. While an infinite number of possibilities exist for determining spectral filters, we take advantage of using neural networks to derive spectral filters leading to precise estimations. To overcome some drawbacks that regularly influence the determination of material abundances using hyperspectral data, we incorporate the spectral variability of the raw materials into the training of the considered neural networks. As a main result, we successfully classify quantized material abundances optically. Thus, the main part of the high computational load, which belongs to the use of neural networks, is avoided. In addition, the derived material abundances become invariant against spatially varying illumination intensity as a remarkable benefit in comparison with spectral filters based on the Moore-Penrose pseudoinverse, for instance.
机译:使用适当设计的光谱滤波器允许光学地确定材料丰富。虽然存在用于确定光谱滤波器的无限可能性,但我们利用神经网络来导出光谱滤波器,从而导致精确估计。为了克服使用超光数据定期影响材料丰度的一些缺点,我们将原材料的光谱可变性纳入所考虑的神经网络的训练中。作为主要结果,我们光学成功分类量化材料丰富。因此,避免了属于使用神经网络的高计算负荷的主要部分。此外,衍生的材料丰度与基于摩洛队PseudoInseverse的光谱滤波器相比,对空间变化的照明强度变得不变,因为与光谱滤波器相比。

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