考虑平滑和突变变化的多时相高光谱图像的解混

Pierre-Antoine Thouvenin, N. Dobigeon, J. Tourneret
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引用次数: 2

摘要

高光谱成像中的一个经典问题,称为高光谱解混,包括估计与图像中存在的每种物质相关的光谱及其在每个像素中的比例。在实践中,光照变化(例如,由于坡度或与观测材料的复杂相互作用)和可能存在的异常值会导致测量的形状和幅度发生重大变化,从而修改提取的特征。在这种情况下,当在不同时刻在同一区域获得高光谱图像序列时,预计会同时受到这种现象的影响。因此,我们提出了一个分层贝叶斯模型,以同时考虑影响一组多时相高光谱图像的平滑和突变的光谱变化。该模型假设平滑变化可以解释为端元变异性的结果,而突变变化是由于成像场景的显著变化(例如,异常值的存在,额外的端元等)。该贝叶斯模型的参数是使用吉布斯采样器根据其后验产生的样本来估计的。对合成数据进行性能评估,并与最先进的解混方法进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unmixing multitemporal hyperspectral images accounting for smooth and abrupt variations
A classical problem in hyperspectral imaging, referred to as hyperspectral unmixing, consists in estimating spectra associated with each material present in an image and their proportions in each pixel. In practice, illumination variations (e.g., due to declivity or complex interactions with the observed materials) and the possible presence of outliers can result in significant changes in both the shape and the amplitude of the measurements, thus modifying the extracted signatures. In this context, sequences of hyperspectral images are expected to be simultaneously affected by such phenomena when acquired on the same area at different time instants. Thus, we propose a hierarchical Bayesian model to simultaneously account for smooth and abrupt spectral variations affecting a set of multitemporal hyperspectral images to be jointly unmixed. This model assumes that smooth variations can be interpreted as the result of endmember variability, whereas abrupt variations are due to significant changes in the imaged scene (e.g., presence of outliers, additional endmembers, etc.). The parameters of this Bayesian model are estimated using samples generated by a Gibbs sampler according to its posterior. Performance assessment is conducted on synthetic data in comparison with state-of-the-art unmixing methods.
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