Feature selection for urban impervious surfaces estimation using optical and SAR images

Hongsheng Zhang, Hui Lin
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引用次数: 3

Abstract

Urban impervious surfaces, such as transport related land (e.g., roads, streets, and parking lots) and building roof tops (commercial, residential, and industrial areas), have been widely recognized as important indicator for urban environments. Numerous methods have been proposed to estimate impervious surfaces from remotely sensed images. However, most of these approaches were proposed with optical remote sensing images, and accurate estimation of impervious surfaces remains challenging due to the diversity of urban land covers. This study presents the effort to synergistically combine optical and SAR data to improve the mapping of impervious surfaces using the Random Forest (RF). The Multilayer Perceptron, Support Vector Machine, and RF are compared for impervious surfaces mapping with the single use of optical image and with the combined optical and SAR images. Experiment shows some interesting results: 1) synergistic use of SPOT-5 and TerraSAR-X images produced more accurate classification of impervious surface mapping, no matter what combinations of features are used; 2) The SAN-based features appeared to provide effective complementary information to the conventional GLCM-based features for the classification, increasing the accuracy by about 0.6% by using supervised classifiers; 3) SVM and RF tended to be superior to MLP for the fusion of SPOT-5 and TerraSAR-X images for LULC classification and ISE. RF is better for the LULC classification as it better handled the spectral confusion among sub types of impervious and non-impervious land covers, while SVM appeared more stable before and after the combination of sub land cover types, and thus is more suitable for the ISE with the classification strategies of mapping impervious surface.
基于光学和SAR影像的城市不透水面估算特征选择
城市不透水表面,如与交通有关的土地(如道路、街道和停车场)和建筑屋顶(商业、住宅和工业区),已被广泛认为是城市环境的重要指标。从遥感影像中估计不透水面的方法有很多。然而,这些方法大多是基于光学遥感图像提出的,由于城市土地覆盖的多样性,对不透水面的准确估计仍然具有挑战性。本研究展示了利用随机森林(RF)将光学和SAR数据协同结合以改进不透水地表制图的努力。比较了多层感知机、支持向量机和射频在不透水表面映射中与单一使用光学图像和结合使用光学和SAR图像的情况。实验显示了一些有趣的结果:1)无论使用何种特征组合,SPOT-5和TerraSAR-X图像的协同使用都能产生更准确的不透水面制图分类;2)基于san的特征为传统的基于glcm的特征提供了有效的补充信息,使用监督分类器的分类准确率提高了约0.6%;3) SVM和RF在融合SPOT-5和TerraSAR-X图像进行LULC分类和ISE时,倾向于优于MLP。RF较好地处理了不透水和不透水土地覆盖子类型之间的光谱混淆,而SVM在子类型组合前后表现出更大的稳定性,因此更适合具有不透水地表映射分类策略的ISE。
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