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首页> 外文期刊>IEEE Geoscience and Remote Sensing Letters >Enhanced Super-Resolution Mapping of Urban Floods Based on the Fusion of Support Vector Machine and General Regression Neural Network
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Enhanced Super-Resolution Mapping of Urban Floods Based on the Fusion of Support Vector Machine and General Regression Neural Network

机译:基于支持向量机和广义回归神经网络融合的增强型城市洪水超分辨率测绘

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摘要

Super-resolution mapping of urban flood (SMUF) is one of the hotspots in remote sensing and urban environment research. In this letter, a new SMUF method based on the fusion of support vector machine and general regression neural network (FSVMGRNN) was proposed to achieve enhanced performance. An SVM-SMUF algorithm was developed and a fusion criterion was formulated. Then, the FSVMGRNN-SMUF algorithm was developed. The results of FSVMGRNN-SMUF were evaluated using Landsat 8 OLI imagery of two representative cities in China. FSVMGRNN-SMUF yielded the most accurate SMUF results among the five SMUF methods according to visual comparisons and quantitative comparisons. The mapping accuracy of FSVMGRNN-SMUF related to the kernel functions was also analyzed and discussed. The results of this letter will help to boost practical applications of median-low resolution remote sensing images in urban flooding mapping, and to strengthen the means for monitoring and assessing urban flooding disasters.
机译:城市洪水超分辨率地图(SMUF)是遥感和城市环境研究的热点之一。在这封信中,提出了一种基于支持向量机和通用回归神经网络(FSVMGRNN)融合的SMUF新方法,以实现更高的性能。开发了一种SVM-SMUF算法,并制定了融合准则。然后,开发了FSVMGRNN-SMUF算法。使用中国两个代表性城市的Landsat 8 OLI图像评估了FSVMGRNN-SMUF的结果。根据目视比较和定量比较,在五种SMUF方法中,FSVMGRNN-SMUF获得了最准确的SMUF结果。 FSVMGRNN-SMUF与内核功能有关的映射精度也进行了分析和讨论。这封信的结果将有助于促进中低分辨率遥感影像在城市洪水测绘中的实际应用,并加强监测和评估城市洪水灾害的手段。

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