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Hyperspectral unmixing using total variation regularized reweighted sparse non-negative matrix factorization

机译:使用总变化正则化加权稀疏非负矩阵分解的高光谱解混

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Recently, non-negative matrix factorization (NMF) model has been widely used in hyperspectral unmixing (HU). In this paper, based on NMF, we explore the properties of abundance maps, and propose a new blind HU algorithm named total variation regularized reweighted sparse NMF (TV-RSNMF). Typically, only a subset of endmembers are assumed to generate the fixed pixel. As a result, the abundance maps are assumed to be sparse. So we introduce a weighted sparse regularization to explore the sparsity of abundance maps in the NMF model. In addition, the abundance maps related to fixed material are assumed to be piecewise smooth and we adopt a total variation (TV) regularizer to promote the piecewise smooth property. TV regularizer can be regarded as an abundance maps denoising procedure, which significantly improves the robustness of the proposed method to noise. Several experiments were conducted to illustrate the performance of the proposed algorithm.
机译:最近,非负矩阵分解(NMF)模型已被广泛用于高光谱分解(HU)中。本文在NMF的基础上,探索了丰度图的性质,并提出了一种新的盲HU算法,称为总变化正则化加权稀疏NMF(TV-RSNMF)。通常,仅假定端部成员的一个子集生成固定像素。结果,丰度图被假定为稀疏的。因此,我们引入了加权的稀疏正则化来探索NMF模型中丰度图的稀疏性。另外,假定与固定材料相关的丰度图是分段平滑的,并且我们采用总变化量(TV)规则化器来提高分段平滑性。电视调节器可以看作是一个丰度图去噪程序,可以显着提高所提方法对噪声的鲁棒性。进行了一些实验来说明所提出算法的性能。

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