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A Novel Multispectral, Panchromatic and SAR Data Fusion for Land Classification

机译:一种新颖的多光谱,全色和SAR数据融合的土地分类

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摘要

Multisensor data fusion is addressed in this article for land classification purposes in a semiarid environment. A novel algorithm based on multispectral, panchromatic and synthetic aperture radar (SAR) data is here presented. The proposed multisensory data fusion approach relies on the generalized intensity-hue-saturation (G-IHS) transform and the A trous wavelet transform (ATWT). The fusion product is obtained by modulating the high features details of the panchromatic ATWT with the SAR texture and by replacing the high-pass details of the G-IHS Intensity component with this panchromatic-SAR modulation. After the fusion product is derived, a classification is performed by using a standard maximum likelihood classifier. The proposed algorithm is tested over a meaningful case study acquired over the Maspalomas Special Natural Reserve (Spain) and processing data from WorldView-2 (for both multispectral and panchromatic channels) and TerraSAR-X (for the SAR channel) missions. Results show a fine preservation of the spectral information contained in each multispectral band. Sharpened details are observed over built-up areas and a smoothing texture is perceived over homogeneous areas (lakes, sea, bare soil, and roads) due to the SAR-panchromatic modulation. This leads to a better overall classification accuracy of the fused image compared to outcomes obtained with a single sensor, resulting 7% and 2% more accurate than multispectral and pan-sharpening classification, respectively.
机译:本文针对半干旱环境中的土地分类目的解决了多传感器数据融合问题。本文提出了一种基于多光谱,全色和合成孔径雷达(SAR)数据的新颖算法。所提出的多传感器数据融合方法依赖于广义强度色相饱和度(G-IHS)变换和A trous小波变换(ATWT)。通过用SAR纹理调制全色ATWT的高细节特征,并用该全色SAR调制代替G-IHS强度分量的高通细节,可以获得融合产品。导出融合积后,使用标准最大似然分类器进行分类。在从马斯帕洛马斯特别自然保护区(西班牙)获得的有意义的案例研究中测试了该算法,并处理了来自WorldView-2(用于多光谱和全色通道)和TerraSAR-X(用于SAR通道)任务的数据。结果表明,每个多光谱带中包含的光谱信息得到了很好的保存。由于SAR全色调制,在建筑区域观察到了锐化的细节,并且在均匀区域(湖泊,海洋,裸露的土壤和道路)上看到了平滑的纹理。与使用单个传感器获得的结果相比,这导致融合图像的总体分类精度更高,分别比多光谱分类和泛锐化分类的准确性高出7%和2%。

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