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A priori fully constrained least squares spectral unmixing based on sparsity

机译:基于稀疏性的先验完全约束最小二乘光谱解混

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Fully constrained least squares (FCLS) method has been widely applied in estimating land cover abundances within an image pixel through spectral unmixing. With FCLS, if given a large spectra library, researchers have to examine the appropriateness of all endmember signatures, and may mistakenly choose the ones that do not exist in the pixel. Such erroneously selected endmember signatures may lead to overestimation of the non-existing endmembers. In this article, A priori FCLS unmixing method based on sparse unmixing was been pro posed. This methodology contains three steps, including: 1) estimating the abundance of each mixed pixel using sparse unmixing with all the endmembers, 2) chosing the number, type, and signatures of endmembers in every mixed pixel and 3) estimating land cover abundances by FCLS only with chosen endmember signatures. Experimental results suggest that the developed a priori FCLS method is with apparently better performance when compared to those of traditional FCLS and sparse unmixing models. Especially, the improvements of the a priori FCLS are more significant with a larger spectral library and/or a better signal to noise ratio (SNR).
机译:完全约束最小二乘(FCLS)方法已广泛应用于通过光谱分解来估计图像像素内的土地覆盖率。使用FCLS,如果给定一个大型光谱库,则研究人员必须检查所有末端成员签名的适当性,并且可能会错误地选择像素中不存在的那些签名。此类错误选择的端成员签名可能会导致高估不存在的端成员。提出了一种基于稀疏分解的先验FCLS分解方法。该方法包括三个步骤,包括:1)使用与所有端成员的稀疏分解来估计每个混合像素的丰度; 2)选择每个混合像素中的端成员的数量,类型和签名; 3)通过FCLS估计土地覆盖量仅具有选定的端成员签名。实验结果表明,与传统的FCLS模型和稀疏分解模型相比,先验的FCLS方法具有明显更好的性能。尤其是,先验FCLS的改进在具有更大的频谱库和/或更好的信噪比(SNR)的情况下更为显着。

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