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Per city-block, density estimation at build-up areas from aerial RGB imagery with deep learning

机译:每座城市块,来自空中RGB图像的建筑区域的密度估计,深度学习

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Estimating the density of the ‘urban fabric’ land cover classes is of major importance for various urban and regional planning activities. However, the generation of such maps is still challenging requiring significant time and labor costs for the per city-block analysis of very high resolution remote sensing data. In this paper, we propose a supervised classification approach based on deep learning towards the accurate density estimation of build-up areas. In particular, for the training procedure we exploit information both from maps (open street, google, etc) and from very high resolution RGB google image mosaics. A patch-based, deep learning model was trained against five land cover classes. During the prediction phase the per city-block classification procedure delivered the locations and percentages of impervious, soil and green regions. Experimental results and validation at two European cities i.e., Athens and Bilbao, indicated overall accuracy rates of 95%. Results, also, highly match with the corresponding layers from the Copernicus Urban Atlas product.
机译:估算“城市面料”陆地覆盖类别的密度对各种城市和区域规划活动的重大重要性。然而,这种地图的生成仍然具有挑战性,需要对非常高分辨率遥感数据的城市块分析进行大量时间和劳动力成本。在本文中,我们提出了一种基于深度学习的监督分类方法,朝向建筑区域的准确密度估算。特别是,对于培训程序,我们从地图(开放街道,谷歌等)和非常高分辨率RGB Google Image Mosaics的信息开发信息。基于补丁的深度学习模型训练了五个陆地覆盖课程。在预测阶段期间,每个城市块分类程序都提供了不透水,土壤和绿色区域的位置和百分比。两座欧洲城市的实验结果和验证,即雅典和毕尔巴鄂,表明总精度率为95%。结果,同样,与来自Copernicus Urban Atlas产品的相应层高度匹配。

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