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Semiblind Hyperspectral Unmixing in the Presence of Spectral Library Mismatches

机译:存在光谱库不匹配的半盲高光谱解混

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摘要

The dictionary-aided sparse regression (SR) approach has recently emerged as a promising alternative to hyperspectral unmixing in remote sensing. By using an available spectral library as a dictionary, the SR approach identifies the underlying materials in a given hyperspectral image by selecting a small subset of spectral samples in the dictionary to represent the whole image. A drawback with the current SR developments is that an actual spectral signature in the scene is often assumed to have zero mismatch with its corresponding dictionary sample, and such an assumption is considered too ideal in practice. In this paper, we tackle the spectral signature mismatch problem by proposing a dictionary-adjusted nonconvex sparsity-encouraging regression (DANSER) framework. The main idea is to incorporate dictionary-correcting variables in an SR formulation. A simple and low per-iteration complexity algorithm is tailor-designed for practical realization of DANSER. Using the same dictionary-correcting idea, we also propose a robust subspace solution for dictionary pruning. Extensive simulations and real-data experiments show that the proposed method is effective in mitigating the undesirable spectral signature mismatch effects.
机译:词典辅助的稀疏回归(SR)方法近来已成为遥感中高光谱分解的有前途的替代方法。通过使用可用的光谱库作为字典,SR方法通过在字典中选择光谱样本的一小子集来表示整个图像,从而识别给定高光谱图像中的基础材料。当前SR发展的一个缺点是,通常假定场景中的实际频谱特征与其对应的字典样本具有零失配,并且在实践中认为这种假设太理想了。在本文中,我们通过提出字典调整的非凸稀疏鼓励回归(DANSER)框架来解决光谱特征不匹配的问题。主要思想是在SR公式中合并字典校正变量。针对DANSER的实际实现,量身设计了一种简单且每次迭代的复杂度较低的算法。使用相同的字典校正思想,我们还提出了健壮的子空间解决方案以进行字典修剪。大量的仿真和真实数据实验表明,所提出的方法可以有效地减轻不良的光谱特征失配效应。

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