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Markov random fields for joint unmixing and segmentation of hyperspectral images

机译:Markov Orutom Fields,用于联合解密和高光谱图像的分割

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This paper studies a new Bayesian algorithm for the unmixing of hyperspectral images. The proposed Bayesian algorithm is based on the well-known linear mixing model (LMM). Spatial correlations between pixels are introduced using hidden variables, or labels, and modeled via a Potts-Markov random field. We assume that the pure materials (or endmembers) contained in the image are known a priori or have been extracted by using an endmember extraction algorithm. The mixture coefficients (referred to as abundances) of the whole hyperspectral image are then estimated by using a hierarchical Bayesian algorithm. A reparametrization of the abundances is considered to handle the physical constraints associated to these parameters. Appropriate prior distributions are assigned to the other parameters and hyperparameters associated to the proposed model. To alleviate the complexity of the resulting joint distribution, a hybrid Gibbs algorithm is developed, allowing one to generate samples that are asymptotically distributed according to the full posterior distribution of interest. The generated samples are finally used to estimate the unknown model parameters. Simulations on synthetic data illustrate the performance of the proposed method.
机译:本文研究了一种新的贝叶斯算法,用于对高光谱图像的解密。所提出的贝叶斯算法基于众所周知的线性混合模型(LMM)。使用隐藏变量或标签引入像素之间的空间相关性,并通过Potts-Markov随机字段建模。我们假设包含在图像中的纯材料(或终端)是已知先验的,或者通过使用EndMember提取算法提取。然后通过使用分级贝叶斯算法估计整个高光谱图像的混合系数(称为丰度)。对丰度的重新定位化被认为是处理与这些参数相关的物理约束。将适当的先前分布分配给与所提出的模型相关联的其他参数和超参数。为了减轻所产生的关节分布的复杂性,开发了一种混合GIBBS算法,允许一个人根据感兴趣的全部后验分布产生渐近分布的样品。最终使用所生成的样本来估计未知的模型参数。对合成数据的模拟说明了所提出的方法的性能。

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