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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Spatially adaptive hyperspectral unmixing through endmembers analytical localization based on sums of anisotropic 2D Gaussians
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Spatially adaptive hyperspectral unmixing through endmembers analytical localization based on sums of anisotropic 2D Gaussians

机译:基于各向异性2D高斯和的末端成员分析定位的空间自适应高光谱解混

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摘要

Spectral unmixing provides, for each pixel in the image, an estimated vector of fractional abundances that correspond to pure signatures, known as endmembers (EMs). Standard unmixing techniques rely only on spectral information and each pixel is solved as an individual entity. Recent studies show that incorporating the image's spatial information enhances accuracy of the unmixing results. Spatial information may allow better selection of relevant EMs, for each pixel, rather than utilizing all potential EMs in solving the spectral mixing problem. To implement this approach, we developed a new method for spatially adaptive spectral unmixing called Gaussian-based spatially adaptive unmixing (GBSAU). GBSAU fits for each EM, a surface by a series of spatial anisotropic 2D Gaussians whose sum represents the EM's fraction distribution over the whole image. These analytical surfaces facilitate a sparse solution for the unmixing process by spatial localization of EMs, which is then used to determine an adaptive subset of actual EMs for each pixel. The performance of our novel method was compared with that of the state-of-art spatially adaptive unimximg method, sparse unmixing via variable splitting augmented Lagrangian and total variation (SUnSAL-TV) as well as with two ordinary non-spatial methods, sparse unmixing by variable splitting and augmented Lagrangian (SUnSAL) and vectorized code projected gradient descent unmixing (VPGDU). The comparison was carried out on both simulated and real hyperspectral images. The results obtained with GBSAU indicated a significant improvement in the overall accuracy of the unmixing process compared with both spatially adaptive and ordinary methods. Quantitatively, GBSAU reduces the average mean absolute error (MAE) of the results by similar to 15%, for cases with SNR = 30 db and 20 db, and by similar to 30% for cases with SNR = 10 db and 5 db. (C) 2018 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.
机译:光谱解混为图像中的每个像素提供了与纯特征相对应的分数丰度估计向量,称为端成员(EM)。标准解混技术仅依赖于光谱信息,并且每个像素作为一个单独的实体进行求解。最近的研究表明,合并图像的空间信息可提高解混结果的准确性。空间信息可以允许为每个像素更好地选择相关的EM,而不是利用所有潜在的EM解决频谱混合问题。为了实现此方法,我们开发了一种新的空间自适应频谱分解方法,称为基于高斯的空间自适应分解(GBSAU)。 GBSAU适合每个EM,通过一系列空间各向异性的2D高斯分布,其总和表示EM在整个图像上的分数分布。这些分析表面可通过EM的空间定位来简化解混合过程的稀疏解,然后将其用于确定每个像素的实际EM的自适应子集。我们将这种新方法的性能与最新的空间自适应unimximg方法的性能进行了比较,该方法是通过可变分裂增强拉格朗日和总变异(SUnSAL-TV)进行稀疏分解,以及两种普通的非空间方法稀疏分解通过变量拆分和增强拉格朗日(SUnSAL)和矢量化的代码投影梯度下降混合(VPGDU)。比较是在模拟和真实高光谱图像上进行的。使用GBSAU获得的结果表明,与空间自适应方法和常规方法相比,混合过程的整体准确性有了显着提高。定量地,对于SNR = 30 db和20 db的情况,GBSAU将结果的平均平均绝对误差(MAE)降低约15%,对于SNR = 10 db和5 db的情况,GBSAU降低约30%。 (C)2018国际摄影测量与遥感学会(ISPRS)。由Elsevier B.V.发布。保留所有权利。

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