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Pigment Unmixing of Hyperspectral Images of Paintings Using Deep Neural Networks

机译:使用深层神经网络的绘画高光谱图像的颜料分解

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In this paper, the problem of automatic nonlinear unmixing of hyperspectral reflectance data using works of art as test cases is described. We use a deep neural network to decompose a given spectrum quantitatively to the abundance values of pure pigments. We show that adding another step to identify the constituent pigments of a given spectrum leads to more accurate unmixing results. Towards this, we use another deep neural network to identify pigments first and integrate this information to different layers of the network used for pigment unmixing. As a test set, the hyperspectral images of a set of mock-up paintings consisting of a broad palette of pigment mixtures, and pure pigment exemplars, were measured. The results of the algorithm on the mock-up test set are reported and analyzed.
机译:在本文中,描述了使用艺术品作为测试用例的自动非线性解密数据的自动非线性解密的问题。我们使用深神经网络定量地分解给给定光谱的纯颜料的丰度值。我们表明,添加另一步骤以识别给定光谱的组成颜料导致更准确的解密结果。为此,我们首先使用另一个深神经网络来识别颜料,并将这些信息集成到用于颜料解混的网络的不同层。作为测试集,测量由颜料混合物的宽调色板和纯颜料样品组成的一组模拟绘画的高光谱图像。报告并分析了模拟测试集的算法的结果。

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