Title :
Similarity-Guided and
-Regularized Sparse Unmixing of Hyperspectral Data
Author :
Yingying Xu ; Faming Fang ; Guixu Zhang
Author_Institution :
Dept. of Comput. Sci. & Technol., East China Normal Univ., Shanghai, China
Abstract :
In this letter, we propose a novel sparse unmixing model combined with two effective regularization terms: one is a similarity-weighting constraint, and the other is the ℓp (0 <; p <; 1) norm sparse regularization. The former utilizes the spatial structural correlation, which is presented in the hyperspectral data, to guide the abundance estimation. When compared with the existing graph Laplacian regularization, our similarity-weighting constraint avoids large matrix inversion, and thus, it can be efficiently solved. As for the ℓp-norm, it has numerical advantages over the convex ℓ1-norm and better approximates the ℓ0-norm theoretically. Moreover, the ℓp-norm regularizer can simultaneously promote sparsity and enforce the abundance sum-to-one constraint. Therefore, this term yields more desirable results in practice. Experimental results on both simulated and real data demonstrate the effectiveness of the proposed model.
Keywords :
hyperspectral imaging; image processing; matrix inversion; remote sensing; Laplacian regularization; hyperspectral data; hyperspectral regularized sparse unmixing; hyperspectral similarity-guided sparse unmixing; matrix inversion; norm sparse regularization; sparse unmixing model; spatial structural correlation; Data models; Estimation; Hyperspectral imaging; Image reconstruction; Libraries; $ell_p$-regularization; Abundance estimation; hyperspectral image; similarity-weighting; sparse unmixing;
Journal_Title :
Geoscience and Remote Sensing Letters, IEEE
DOI :
10.1109/LGRS.2015.2474744