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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Improving the impervious surface estimation with combined use of optical and SAR remote sensing images
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Improving the impervious surface estimation with combined use of optical and SAR remote sensing images

机译:结合使用光学和SAR遥感影像改善不透水的表面估计

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Accurate mapping of urban impervious surfaces is important but challenging due to the diversity of urban land covers. This study presents an effort to synergistically combine optical and SAR data to improve the mapping of impervious surfaces. Three pairs of optical and SAR images, Landsat ETM+ and ENVISAT ASAR, SPOT-5 and ENVISAR ASAR, and SPOT-5 and TerraSAR-X, were selected in three study areas to validate the effectiveness of the methods in this study. The potential of Random Forest (RF) was evaluated with parameter optimization for combining the optical and SAR images. Experiment results demonstrate some interesting findings. Firstly, the built-in out-of-bag (OOB) error is insufficient for accuracy assessment, and an assessment with additional reference data is required for combining optical and SAR images using RF. Secondly, the optimal number of variables (m) for splitting the decision tree nodes in RF should be some different from the principles reported previously, and an empirical relationship was given for determining the parameter m. Thirdly, the optimal number of decision trees (T) in RF is not sensitive to the resolutions and sensor types of optical and SAR images, and the optimal T in this study is 20. Fourthly, the combined use of optical and SAR images by using RF is effective to improve the land cover classification and impervious surface estimation, by reducing the confusions between bright impervious surface and bare soil and dark impervious surface and bare soil, as well as shaded area and water surface. Even though the easily-confused land classes tend to be different in different resolutions of images, the effectiveness of combining optical and SAR images is consistent. This improvement is more significant when combing lower resolution optical and SAR images. The conclusions of this study could serve as an important reference for further applications of optical and SAR images, and as a potential reference for the applications of RF to the fusion of other multi-source remote sensing data.
机译:对城市不透水表面进行精确测绘固然重要,但由于城市土地覆盖的多样性而具有挑战性。这项研究提出了将光学和SAR数据协同组合以改善不透水表面的映射的工作。在三个研究区域中选择了三对光学和SAR图像,即Landsat ETM +和ENVISAT ASAR,SPOT-5和ENVISAR ASAR,以及SPOT-5和TerraSAR-X,以验证该方法在本研究中的有效性。通过参数优化来评估光学和SAR图像,对随机森林(RF)的潜力进行了评估。实验结果证明了一些有趣的发现。首先,内置的袋外(OOB)误差不足以进行准确性评估,并且需要使用附加参考数据进行评估,才能使用RF组合光学和SAR图像。其次,用于分割RF中决策树节点的最佳变量数(m)应与先前报道的原理有所不同,并给出确定参数m的经验关系。第三,射频中的决策树(T)的最佳数目对光学和SAR图像的分辨率和传感器类型不敏感,并且本研究中的最佳T为20。第四,通过结合使用光学和SAR图像射频通过减少明亮的不透水表面和裸露的土壤以及黑暗的不透水表面和裸露的土壤以及阴影区域和水面之间的混淆,有效地改善了土地覆盖分类和不透水的表面估计。即使容易混淆的土地类别在不同的图像分辨率下往往会有所不同,但合并光学和SAR图像的效果是一致的。当组合较低分辨率的光学和SAR图像时,此改进更为显着。这项研究的结论可作为进一步应用光学和SAR图像的重要参考,并可作为将RF应用于其他多源遥感数据融合的潜在参考。

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