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首页> 外文期刊>Angewandte Chemie >Nonlinear Unmixing of Hyperspectral Datasets for the Study of Painted Works of Art
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Nonlinear Unmixing of Hyperspectral Datasets for the Study of Painted Works of Art

机译:高光谱数据集的非线性解密,用于研究彩绘艺术品

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摘要

Nonlinear unmixing of hyperspectral reflectance data is one of the key problems in quantitative imaging of painted works of art. The approach presented is to interrogate a hyperspectral image cube by first decomposing it into a set of reflectance curves representing pure basis pigments and second to estimate the scattering and absorption coefficients of each pigment in a given pixel to produce estimates of the component fractions. This two-step algorithm uses a deep neural network to qualitatively identify the constituent pigments in any unknown spectrum and, based on the pigment(s) present and Kubelka-Munk theory to estimate the pigment concentration on a per-pixel basis. Using hyperspectral data acquired on a set of mock-up paintings and a well-characterized illuminated folio from the 15th century, the performance of the proposed algorithm is demonstrated for pigment recognition and quantitative estimation of concentration.
机译:高光谱反射率数据的非线性解密是涂漆工艺作品的定量成像中的关键问题之一。 所呈现的方法是通过首先将其分解为代表纯基颜料的一组反射曲线和第二以估计给定像素中的每个颜料的散射和吸收系数来询问高光谱图像立方体以产生组件级分的估计。 该两步算法使用深神经网络来定性地识别任何未知光谱中的组成颜料,并且基于存在的颜料和Kubelka-Munk理论,以估计每像素的颜料浓度。 使用在一组模拟绘画和15世纪的型号绘画和特征的发光作品集上获取的高光谱数据,对颜料识别和浓度的定量估计进行了所提出的算法的性能。

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