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Adaptive Markov Random Fields for Joint Unmixing and Segmentation of Hyperspectral Images

机译:自适应马尔科夫随机场用于高光谱图像的联合分解和分割

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摘要

Linear spectral unmixing is a challenging problem in hyperspectral imaging that consists of decomposing an observed pixel into a linear combination of pure spectra (or endmembers) with their corresponding proportions (or abundances). Endmember extraction algorithms can be employed for recovering the spectral signatures while abundances are estimated using an inversion step. Recent works have shown that exploiting spatial dependencies between image pixels can improve spectral unmixing. Markov random fields (MRF) are classically used to model these spatial correlations and partition the image into multiple classes with homogeneous abundances. This paper proposes to define the MRF sites using similarity regions. These regions are built using a self-complementary area filter that stems from the morphological theory. This kind of filter divides the original image into flat zones where the underlying pixels have the same spectral values. Once the MRF has been clearly established, a hierarchical Bayesian algorithm is proposed to estimate the abundances, the class labels, the noise variance, and the corresponding hyperparameters. A hybrid Gibbs sampler is constructed to generate samples according to the corresponding posterior distribution of the unknown parameters and hyperparameters. Simulations conducted on synthetic and real AVIRIS data demonstrate the good performance of the algorithm.
机译:线性光谱解混是高光谱成像中的一个挑战性问题,高光谱成像包括将观察到的像素分解为纯光谱(或末端成员)及其对应比例(或丰度)的线性组合。端元提取算法可用于恢复光谱特征,同时使用反演步骤估算丰度。最近的工作表明,利用图像像素之间的空间依赖性可以改善光谱的混合。马尔可夫随机场(MRF)通常用于对这些空间相关性进行建模,并将图像划分为具有同质丰度的多个类别。本文建议使用相似区域定义MRF站点。这些区域是使用基于形态学原理的自补面积滤波器构建的。这种滤波器将原始图像划分为平坦区域,在这些平坦区域中基础像素具有相同的光谱值。一旦明确建立了MRF,就提出了一种层次贝叶斯算法来估计丰度,类别标签,噪声方差和相应的超参数。构建了混合Gibbs采样器,以根据未知参数和超参数的相应后验分布生成样本。对合成和真实AVIRIS数据进行的仿真证明了该算法的良好性能。

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