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Mapping urban land cover from high spatial resolution hyperspectral data: An approach based on simultaneously unmixing similar pixels with jointly sparse spectral mixture analysis

机译:从高空间分辨率的高光谱数据映射城市陆地覆盖:一种基于同时解混的方法,其具有共同稀疏光谱混合分析的类似像素

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摘要

In remote sensing data exploitation, spectral mixture analysis is commonly used to detect land cover materials and their corresponding proportions present in the observed scene. In recent years, high spatial resolution airborne hyperspectral images have shown their potential for deriving accurate land cover maps. In this paper, a new spectral mixture analysis model for mapping urban environments using high spatial resolution airborne hyperspectral data is proposed. First, non-local self-similarity is exploited to partition the scene into groups of similar pixels. The spectral signals of the pixels in each of these groups are assumed to be comprised of the same endmembers, but with different abundance values. Then, the similar pixels in each group are simultaneously unmixed using a jointly sparse spectral mixture analysis method. The proposed method was applied to map land cover in Pavia city, northern Italy, using airborne ROSIS data. An overall classification accuracy of 97.24% was achieved for the Vegetation - Impervious surface - Soil model. Our experimental results demonstrate that the proposed jointly sparse spectral mixture analysis model is well suited for mapping land cover in urban environments using high resolution hyperspectral data. (C) 2017 Elsevier Inc. All rights reserved.
机译:在遥感数据剥削中,谱混合分析通常用于检测陆地覆盖材料及其在观察到的场景中存在的相应比例。近年来,高空间分辨率空气传播的高光谱图像显示了衍生准确的陆地覆盖图的可能性。本文提出了一种新的使用高空间分辨率空气传播高光谱数据映射城市环境的新型光谱混合分析模型。首先,利用非本地自我相似性将场景分为相似像素的组。假设这些组中的每一个中的像素的光谱信号由相同的终端(但具有不同的丰度值。然后,使用共同稀疏的光谱混合物分析方法同时解混在每组中的相似像素。拟议的方法应用于北部意大利北部帕维亚市的陆地覆盖,使用空气ross数据。植被防渗表面 - 土壤模型实现了97.24%的整体分类准确性。我们的实验结果表明,建议的共同稀疏光谱混合分析模型非常适合使用高分辨率高光谱数据在城市环境中绘制陆地覆盖。 (c)2017年Elsevier Inc.保留所有权利。

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