纯像元遥感数据的盲解:利用稀疏性和非负性的空间方法的扩展和比较

M. S. Karoui, Y. Deville, S. Hosseini, A. Ouamri
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引用次数: 11

摘要

多光谱和高光谱成像系统是遥感领域最强大的工具之一。在遥感图像中,像素值通常是观测场景中包含的纯物质贡献的线性混合物。在本文中,我们扩展了我们最近开发的空间方法,将遥感数据中的每个像元与一些纯像元进行盲解,并比较了它们在多光谱和高光谱图像中的性能。这些扩展方法与盲源分离(BSS)问题有关,并基于稀疏分量分析(SCA)和非负性约束。首先使用基于空间相关性或基于方差的SCA算法(检测少量纯像素区域)来识别混合矩阵,通过两种不同的方法来选择该矩阵的列。然后使用非负最小二乘(NLS)或非负矩阵分解(NMF)方法提取空间源。在实际合成数据的基础上进行了实验,比较了这些扩展方法的精度和计算量。结果表明,与基于相关性的方法相比,基于方差的方法具有较高的准确性和较低的计算成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Blind unmixing of remote sensing data with some pure pixels: Extension and comparison of spatial methods exploiting sparsity and nonnegativity properties
Multispectral and hyperspectral imaging systems are among the most powerful tools in the field of remote sensing. In remote sensing imagery, pixel values are often linear mixtures of contributions from pure materials contained in the observed scene. In this paper, we extend our recently developed spatial methods for blindly unmixing each pixel of remote sensing data with some pure pixels and we compare their performance, both for multispectral and hyperspectral images. These extended methods are related to the blind source separation (BSS) problem, and are based on sparse component analysis (SCA) and nonnegativity constraints. Spatial correlation-based or variance-based SCA algorithms (which detect a few pure-pixel zones) are firstly used to identify the mixing matrix by means of two different approaches for selecting the columns of this matrix. Nonnegative least squares (NLS) or nonnegative matrix factorization (NMF) methods are then used to extract spatial sources. Experiments based on realistic synthetic data are performed to compare the accuracies and the computational costs of these extended methods. We show that the tested methods yield high accuracy with low computational cost for the variance-based methods as compared to those based on correlation.
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