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High-resolution SAR and high-resolution optical data integration for sub-urban land-cover classification

机译:高分辨率SAR和高分辨率光学数据集成,用于城郊土地覆盖分类

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This study shows a comparison between pixel-based and object-based approaches in data fusion of high-resolution multispectral GeoEye-1 imagery and high-resolution COSMO-SkyMed SAR data for land-cover/land-use classification. The per-pixel method consisted of a maximum likelihood classification of fused data based on discrete wavelet transform and a classification from optical images alone. Optical and SAR data were then integrated into an object-oriented environment with the addition of texture measurements from SAR and classified with a nearest neighbor approach. Results were compared with the classification of the GeoEye-1 data alone and the outcomes pointed out that per-pixel data fusion did not improve the classification accuracy, while the object-based data integration increased the overall accuracy from 73% to 89%. According to results, an object-based approach with the introduction of adjunctive information layers proved to be more performing than standard pixel-based methods in landcover/ land-use classification.
机译:这项研究显示了高分辨率多光谱GeoEye-1影像与高分辨率COSMO-SkyMed SAR数据的数据融合中基于像素和基于对象的方法之间的比较,以进行土地覆盖/土地利用分类。每像素方法包括基于离散小波变换的融合数据的最大似然分类和仅来自光学图像的分类。然后,将光学和SAR数据整合到一个面向对象的环境中,并添加来自SAR的纹理测量值,并使用最近邻方法进行分类。将结果与仅对GeoEye-1数据的分类进行了比较,结果指出,每像素数据融合不能提高分类精度,而基于对象的数据集成将整体精度从73%提高到89%。根据结果​​,在覆盖土地/土地利用分类中,引入辅助信息层的基于对象的方法被证明比基于标准像素的方法具有更高的性能。

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