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Nonlinear unmixing by using non-euclidean metrics in a linear unmixing chain

机译:非线性解密通过在线性解混链中使用非欧几里德度量

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In the linear mixing model, many techniques for endmember extraction are based on the assumption that pure pixels exist in the data, and form the extremes of a simplex embedded in the data cloud. These endmembers can then be obtained by geometrical approaches, such as looking for the largest simplex, or by maximal orthogonal subspace projections. Also obtaining the abundances of each pixel with respect to these endmembers can be completely written in geometrical terms. While these geometrical algorithms assume Euclidean geometry, it has been shown that using different metrics can offer certain benefits, such as dealing with nonlinear mixing effects by using geodesic or kernel distances, or dealing with correlations and colored noise by using Mahalanobis metrics. In this paper, we demonstrate how a linear unmixing chain based on maximal orthogonal subspace projections and simplex projection can be written in terms of distance geometry, so that other metrics can be easily employed. This yields a very flexible processing chain: by using other metrics, the same unmixing methodology can be used to deal with a wide range of unmixing models and scenarios. As an example, metrics are provided for dealing with intimate mixtures, nonlinear dimensionality reduction, and colored noise.
机译:在线性混合模型中,许多用于终点提取的技术基于数据中存在纯像素的假设,并形成嵌入在数据云中的单纯性的极端物。然后可以通过几何方法获得这些终端,例如寻找最大的单纯性,或通过最大正交子空间投影。还可以以几何术语获得相对于这些终点的每个像素的丰度。虽然这些几何算法假设欧几里德几何形状,但已经证明,使用不同的度量可以提供某些益处,例如通过使用测地或内核距离处理非线性混合效果,或者通过使用Mahalanobis指标处理相关性和彩色噪声。在本文中,我们演示了基于最大正交子空间投影和单纯x投影的线性解密链如何写入距离几何体,从而可以容易地使用其他度量。这产生了一个非常灵活的加工链:通过使用其他度量,可以使用相同的解密方法来处理各种解密的模型和场景。作为示例,提供了用于处理完整混合物,非线性维度减小和彩色噪声的度量。

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