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Hyperspectral Image Unmixing Using a Multiresolution Sticky HDP

机译:使用多分辨率粘性HDP的高光谱图像分解

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This paper is concerned with joint Bayesian endmember extraction and linear unmixing of hyperspectral images using a spatial prior on the abundance vectors. We propose a generative model for hyperspectral images in which the abundances are sampled from a Dirichlet distribution (DD) mixture model, whose parameters depend on a latent label process. The label process is then used to enforces a spatial prior which encourages adjacent pixels to have the same label. A Gibbs sampling framework is used to generate samples from the posterior distributions of the abundances and the parameters of the DD mixture model. The spatial prior that is used is a tree-structured sticky hierarchical Dirichlet process (SHDP) and, when used to determine the posterior endmember and abundance distributions, results in a new unmixing algorithm called spatially constrained unmixing (SCU). The directed Markov model facilitates the use of scale-recursive estimation algorithms, and is therefore more computationally efficient as compared to standard Markov random field (MRF) models. Furthermore, the proposed SCU algorithm estimates the number of regions in the image in an unsupervised fashion. The effectiveness of the proposed SCU algorithm is illustrated using synthetic and real data.
机译:本文涉及在丰富矢量上使用空间先验的联合贝叶斯端元提取和高光谱图像的线性解混。我们提出了一种高光谱图像的生成模型,其中从Dirichlet分布(DD)混合模型中采样丰度,其参数取决于潜在的标记过程。然后,使用标签处理来强制执行空间先验,以鼓励相邻像素具有相同的标签。 Gibbs采样框架用于根据丰度的后验分布和DD混合模型的参数生成样本。使用的空间先验是树结构的粘性分层Dirichlet过程(SHDP),当用于确定后端成员和丰度分布时,会导致一种新的分解算法,称为空间约束分解(SCU)。有向马尔可夫模型促进了尺度递归估计算法的使用,因此与标准马尔可夫随机场(MRF)模型相比,计算效率更高。此外,提出的SCU算法以无监督的方式估计图像中的区域数量。提出的SCU算法的有效性通过综合和真实数据进行了说明。

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