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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >Non-Local Sparse Unmixing for Hyperspectral Remote Sensing Imagery
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Non-Local Sparse Unmixing for Hyperspectral Remote Sensing Imagery

机译:高光谱遥感影像的非局部稀疏分解

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摘要

Sparse unmixing is a promising approach that acts as a semi-supervised unmixing strategy by assuming that the observed image signatures can be expressed in the form of linear combinations of a number of pure spectral signatures that are known in advance. However, conventional sparse unmixing involves finding the optimal subset of signatures for the observed data in a very large standard spectral library, without considering the spatial information. In this paper, a new sparse unmixing algorithm based on non-local means, namely non-local sparse unmixing (NLSU), is proposed to perform the unmixing task for hyperspectral remote sensing imagery. In NLSU, the non-local means method, as a regularizer for sparse unmixing, is used to exploit the similar patterns and structures in the abundance image. The NLSU algorithm based on the sparse spectral unmixing model can improve the spectral unmixing accuracy by incorporating the non-local spatial information by means of a weighting average for all the pixels in the abundance image. Five experiments with three simulated and two real hyperspectral images were performed to evaluate the performance of the proposed algorithm in comparison to the previous sparse unmixing methods: sparse unmixing via variable splitting and augmented Lagrangian (SUnSAL) and sparse unmixing via variable splitting augmented Lagrangian and total variation (SUnSAL-TV). The experimental results demonstrate that NLSU outperforms the other algorithms, with a better spectral unmixing accuracy, and is an effective spectral unmixing algorithm for hyperspectral remote sensing imagery.
机译:稀疏分解是一种有前途的方法,它通过假设观察到的图像签名可以以事先已知的多个纯光谱签名的线性组合形式表示,从而充当半监督分解策略。然而,常规的稀疏分解涉及在非常大的标准光谱库中为观察到的数据找到签名的最佳子集,而不考虑空间信息。提出了一种基于非局部均值的稀疏混合算法,即非局部稀疏混合算法(NLSU),以完成高光谱遥感影像的混合任务。在NLSU中,使用非局部均值方法作为稀疏分解的正则化器,以利用丰度图像中的相似图案和结构。基于稀疏光谱解混模型的NLSU算法可以通过利用丰度图像中所有像素的加权平均值合并非局部空间信息来提高光谱解混精度。与以前的稀疏解混合方法相比,使用三个模拟和两个真实高光谱图像进行了五个实验,以评估所提出算法的性能:通过变量分裂和增强拉格朗日(SUnSAL)进行稀疏解和通过变量分裂增强拉格朗日和总稀疏解混合变体(SUnSAL-TV)。实验结果表明,NLSU算法优于其他算法,光谱分解精度更高,是一种用于高光谱遥感影像的有效光谱分解算法。

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