University of Toulouse, IRIT/INP-ENSEEIHT/TéSA, 31071 Toulouse cedex 7, France.
IEEE Trans Image Process. 2010 Jun;19(6):1403-13. doi: 10.1109/TIP.2010.2042993. Epub 2010 Mar 8.
This paper studies a new Bayesian unmixing algorithm for hyperspectral images. Each pixel of the image is modeled as a linear combination of so-called endmembers. These endmembers are supposed to be random in order to model uncertainties regarding their knowledge. More precisely, we model endmembers as Gaussian vectors whose means have been determined using an endmember extraction algorithm such as the famous N-finder (N-FINDR) or Vertex Component Analysis (VCA) algorithms. This paper proposes to estimate the mixture coefficients (referred to as abundances) using a Bayesian algorithm. Suitable priors are assigned to the abundances in order to satisfy positivity and additivity constraints whereas conjugate priors are chosen for the remaining parameters. A hybrid Gibbs sampler is then constructed to generate abundance and variance samples distributed according to the joint posterior of the abundances and noise variances. The performance of the proposed methodology is evaluated by comparison with other unmixing algorithms on synthetic and real images.
本文研究了一种新的用于高光谱图像的贝叶斯非负解混算法。图像的每个像素都被建模为所谓的端元的线性组合。为了模拟关于它们的知识的不确定性,这些端元被假设为随机的。更准确地说,我们将端元建模为高斯向量,其均值是使用端元提取算法(如著名的 N-finder(N-FINDR)或顶点成分分析(VCA)算法)确定的。本文提出使用贝叶斯算法来估计混合系数(称为丰度)。为了满足正性和可加性约束,为丰度分配合适的先验概率,而对于其余参数选择共轭先验概率。然后构建一个混合 Gibbs 采样器,以生成根据丰度和噪声方差的联合后验分布的丰度和方差样本。通过与其他解混算法在合成和真实图像上的比较,评估了所提出方法的性能。