Urban vegetation classification with high-resolution PlanetScope and SkySat multispectral imagery

L. Szabó, Dávid Abriha, Kwanele Phinzi, S. Szabó
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引用次数: 1

Abstract

In this study two high-resolution satellite imagery, the PlanetScope, and SkySat were compared based on their classification capabilities of urban vegetation. During the research, we applied Random Forest and Support Vector Machine classification methods at a study area, center of Rome, Italy. We performed the classifications based on the spectral bands, then we involved the NDVI index, too. We evaluated the classification performance of the classifiers using different sets of input data with ROC curves and AUC values. Additional statistical analyses were applied to reveal the correlation structure of the satellite bands and the NDVI and General Linear Modeling to evaluate the AUC of different models. Although different classification methods did not result in significantly differing outcomes (AUC values between 0.96 and 0.99), SVM’s performance was better. The contribution of NDVI resulted in significantly higher AUC values. SkySat’s bands provided slightly better input data related to PlanetScope but the difference was minimal (~3%); accordingly, both satellites ensured excellent classification results.
基于高分辨率PlanetScope和SkySat多光谱图像的城市植被分类
本研究比较了PlanetScope和SkySat两种高分辨率卫星图像对城市植被的分类能力。在研究过程中,我们在意大利罗马市中心的一个研究区域应用了随机森林和支持向量机分类方法。我们先基于光谱波段进行分类,然后再引入NDVI指数。我们使用具有ROC曲线和AUC值的不同输入数据集来评估分类器的分类性能。通过统计分析,揭示了卫星波段与NDVI和一般线性模型的相关结构,评估了不同模型的AUC。虽然不同分类方法的结果差异不显著(AUC值在0.96 ~ 0.99之间),但SVM的性能更好。NDVI的贡献导致AUC值显著升高。SkySat的波段提供了与PlanetScope相关的稍好的输入数据,但差异很小(约3%);因此,这两颗卫星都确保了极好的分类结果。
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