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Urban Impervious Surface Extraction Based on the Integration of Remote Sensing Images and Social Media Data

机译:基于遥感影像与社交媒体数据融合的城市不透水地表提取

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This paper presents an inspiring approach for accurate estimation of impervious surfaces, which exploits the strength of two kind of heterogeneous features, i.e., physical features derived from satellite images and social features derived from social media datasets, respectively. On the one hand, we use a morphological attribute profiles guided spectral mixture analysis model to achieve estimates of physical features. On the other hand, we mine the social features from textual information of social media datasets. Then, a multivariable linear regression model is conducted to obtain the impervious surfaces. Experiment results, conducted with multi-spectral images collected by LANDSAT-8 and social media datasets scraped from Sina Weibo of Guangzhou city, suggest that our approach could lead to reliable and good estimation of the imperviousness.
机译:本文提出了一种启发性的方法来精确估计不透水的表面,该方法利用了两种异质性特征的强度,即分别来自卫星图像的物理特征和源自社交媒体数据集的社会特征。一方面,我们使用形态学特征轮廓指导的光谱混合分析模型来实现对物理特征的估计。另一方面,我们从社交媒体数据集的文本信息中挖掘社交特征。然后,进行多元线性回归模型以获得不透水面。用LANDSAT-8收集的多光谱图像和从广州市新浪微博抓取的社交媒体数据集进行的实验结果表明,我们的方法可以导致对渗透性的可靠且良好的估计。

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