Linear spectral mixture models (LMM) provide a concise form to disentangle the constituent materials (endmembers) and their corresponding proportions (abundance) in a single pixel. The critical challenges are how to model the spectral prior distribution and spectral variability. Prior knowledge and spectral variability can be rigorously modeled under the Bayesian framework, where posterior estimation of Abundance is derived by combining observed data with endmember prior distribution. Considering the key challenges and the advantages of the Bayesian framework, a novel method using a diffusion posterior sampler for semiblind unmixing, denoted as DPS4Un, is proposed to deal with these challenges with the following features: (1) we view the pretrained conditional spectrum diffusion model as a posterior sampler, which can combine the learned endmember prior with observation to get the refined abundance distribution. (2) Instead of using the existing spectral library as prior, which may raise bias, we establish the image-based endmember bundles within superpixels, which are used to train the endmember prior learner with diffusion model. Superpixels make sure the sub-scene is more homogeneous. (3) Instead of using the image-level data consistency constraint, the superpixel-based data fidelity term is proposed. (4) The endmember is initialized as Gaussian noise for each superpixel region, DPS4Un iteratively updates the abundance and endmember, contributing to spectral variability modeling. The experimental results on three real-world benchmark datasets demonstrate that DPS4Un outperforms the state-of-the-art hyperspectral unmixing methods.
翻译:线性光谱混合模型(LMM)提供了一种简洁的形式来解析单个像素中组成材料(端元)及其对应比例(丰度)的分离。关键挑战在于如何建模光谱先验分布与光谱变异性。在贝叶斯框架下,可严格建模先验知识与光谱变异性,其中丰度的后验估计通过结合观测数据与端元先验分布推导得出。针对核心挑战及贝叶斯框架的优势,本文提出一种基于扩散后验采样器的半盲解混新方法(记为DPS4Un),其具备以下特点以应对这些挑战:(1)将预训练的条件光谱扩散模型视为后验采样器,可结合学习到的端元先验与观测数据获取精细化丰度分布。(2)为避免使用现有光谱库作为先验可能引入偏差,我们在超像素内建立基于图像的端元束,用于训练基于扩散模型的端元先验学习器。超像素确保子场景更具同质性。(3)提出基于超像素的数据保真项,替代图像级数据一致性约束。(4)端元以高斯噪声形式初始化于每个超像素区域,DPS4Un通过迭代更新丰度与端元,助力光谱变异性建模。在三个真实世界基准数据集上的实验结果表明,DPS4Un优于当前最先进的高光谱解混方法。