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A new approach to the interpretation ofXRFspectral imaging data using neural networks

机译:利用神经网络解释XRF光谱成像数据的新方法

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Self-organising map (SOM), an unsupervised machine learning algorithm based on neural networks, is applied to introduce a novel approach for the analysis of XRF spectral imaging data. This method automatically reduced hundreds of thousands of XRF spectra in a spectral image dataset to a handful of distinct clusters that share similar spectra. In this study, we show how clustering and the combination of spatial and spectral information can be used to aid materials identification and deduce the paint sequence. The efficiency and accuracy of the method is presented through the analysis of a Peruvian watercolour painting from the Getty Research Institute collection. Confirmation of the interpretation was provided by complementary non-invasive techniques, such as optical microscopy, reflectance and Raman spectroscopies.
机译:自组织映射(SOM)是一种基于神经网络的无监督机器学习算法,用于介绍一种分析XRF光谱成像数据的新方法。该方法自动将光谱图像数据集中的数十万个XRF光谱缩减为少数几个具有相似光谱的不同簇。在这项研究中,我们展示了如何利用聚类以及空间和光谱信息的组合来辅助材料识别和推断油漆序列。通过对盖蒂研究所收藏的一幅秘鲁水彩画的分析,说明了该方法的有效性和准确性。通过补充的非侵入性技术,如光学显微镜、反射光谱和拉曼光谱,对解释进行了确认。

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