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Nonparametric Detection of Nonlinearly Mixed Pixels and Endmember Estimation in Hyperspectral Images

机译:高光谱图像中非线性混合像素的非参数检测和端元估计

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摘要

Mixing phenomena in hyperspectral images depend on a variety of factors, such as the resolution of observation devices, the properties of materials, and how these materials interact with incident light in the scene. Different parametric and nonparametric models have been considered to address hyperspectral unmixing problems. The simplest one is the linear mixing model. Nevertheless, it has been recognized that the mixing phenomena can also be nonlinear. The corresponding nonlinear analysis techniques are necessarily more challenging and complex than those employed for linear unmixing. Within this context, it makes sense to detect the nonlinearly mixed pixels in an image prior to its analysis, and then employ the simplest possible unmixing technique to analyze each pixel. In this paper, we propose a technique for detecting nonlinearly mixed pixels. The detection approach is based on the comparison of the reconstruction errors using both a Gaussian process regression model and a linear regression model. The two errors are combined into a detection statistics for which a probability density function can be reasonably approximated. We also propose an iterative endmember extraction algorithm to be employed in combination with the detection algorithm. The proposed detect-then-unmix strategy, which consists of extracting endmembers, detecting nonlinearly mixed pixels and unmixing, is tested with synthetic and real images.
机译:高光谱图像中的混合现象取决于多种因素,例如观察装置的分辨率,材料的属性以及这些材料如何与场景中的入射光相互作用。已经考虑了不同的参数模型和非参数模型来解决高光谱解混问题。最简单的一种是线性混合模型。然而,已经认识到混合现象也可以是非线性的。相应的非线性分析技术必定比线性分解技术更具挑战性和复杂性。在这种情况下,有意义的是在分析图像之前先检测图像中的非线性混合像素,然后采用最简单的可能的混合技术来分析每个像素。在本文中,我们提出了一种检测非线性混合像素的技术。该检测方法基于使用高斯过程回归模型和线性回归模型对重构误差的比较。将这两个错误合并为一个检测统计量,可以合理地近似概率密度函数。我们还提出了与检测算法结合使用的迭代末端成员提取算法。提出的先检测后再混合策略由合成的最终图像和真实图像进行测试,该策略包括提取端成员,检测非线性混合像素并进行不混合。

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