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Unmixing multiple intimate mixtures using manifold clustering

机译:使用歧管聚类解密多个亲密混合物

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In this paper, we will show that the Hapke model, a well known radiative transfer scattering model for intimate mixtures, when considered as a nonlinear function of endmember grain sizes, abundances, illumination and viewing angles, can be represented geometrically as a low dimensional manifold with a gentle curvature. In this scenario, we can represent the data cloud of a scene composed by several intimate mixtures with shared endmembers as a set of intersecting manifolds. We propose a manifold-clustering based method to identify the different intimate mixtures by learning the optimal geometrical separation of a linear approximation of the corresponding manifolds. Unmixing is then performed separately in each discovered cluster by a modification of the ISOMAP embedding that takes into account that the Hapke model produces data clouds exhibiting an increasing density gradient from bright to dark endmembers. Given the lack of availability of ground truth and datasets of known intimate mixture measurements, we test the algorithm on several simulated datasets generated using a version of the Hapke model.
机译:在本文中,我们将显示HAPKE模型,一种用于互联混合物的众所周知的辐射转移散射模型,当被认为是端部谷物尺寸的非线性函数时,可以以低维歧管代表几何上表示温和曲率。在这种情况下,我们可以代表由几个私密混合器组成的场景的数据云,其中具有共享终端用作一组交叉歧管。我们提出了一种基于歧管聚类的方法来识别不同的互联混合物,通过学习相应歧管的线性近似的最佳几何分离。然后,通过考虑到HAPKE模型的ISOMAP嵌入的修改,在每个发现的集群中分别在每个发现的集群中进行分开进行,该群集考虑到HAPKE模型产生从明亮到暗端的较高的密度梯度的数据云。鉴于缺乏已知亲密混合测量的地面真理和数据集的可用性,我们在使用HAPKE模型版本生成的若干模拟数据集中测试算法。

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