From local to global unmixing of hyperspectral images to reveal spectral variability

G. Tochon, Lucas Drumetz, M. Veganzones, M. Mura, J. Chanussot
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引用次数: 5

Abstract

The linear mixing model is widely assumed when unmixing hyperspectral images, but it cannot account for endmembers spectral variability. Thus, several workarounds have arisen in the hyperspectral unmixing literature, such as the extended linear mixing model (ELMM), which authorizes endmembers to vary pixelwise according to scaling factors, or local spectral unmixing (LSU) where the unmixing process is conducted locally within the image. In the latter case however, results are difficult to interpret at the whole image scale. In this work, we propose to analyze the local results of LSU within the ELMM framework, and show that it not only allows to reconstruct global endmembers and fractional abundances from the local ones, but it also gives access to the scaling factors advocated by the ELMM. Results obtained on a real hyperspectral image confirm the soundness of the proposed methodology.
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从局部到全局的高光谱图像解混,揭示光谱变异性
线性混合模型在解调高光谱图像时被广泛采用,但它不能解释端元光谱的变化。因此,在高光谱解混文献中出现了几种解决方案,例如扩展线性混合模型(ELMM),它允许端元根据比例因子在像素上变化,或者局部光谱解混(LSU),其中解混过程在图像内局部进行。然而,在后一种情况下,结果很难在整个图像尺度上解释。在这项工作中,我们建议在ELMM框架内分析LSU的局部结果,并表明它不仅允许从局部结果重建全局端元和分数丰度,而且还提供了ELMM所提倡的比例因子。在真实高光谱图像上获得的结果证实了所提出方法的合理性。
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