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Local climate zone mapping as remote sensing scene classification using deep learning: A case study of metropolitan China

机译:局部气候区映射为使用深度学习遥感场景分类的映射 - 以大都市的案例研究

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China, with the world's largest population, has gone through rapid development in the last forty years and now has over 800 million urban citizens. Although urbanization leads to great social and economic progress, they may be confronted with other issues, including extra heat and air pollution. Local climate zone (LCZ), a new concept developed for urban heat island research, provides a standard classification system for the urban environment. LCZs are defined by the context of the urban environment; the minimum diameter of an LCZ is expected to be 400-1,000 m so that it can have a valid effect on the urban climate. However, most existing methods (e.g., the WUDAPT method) regard this task as pixel-based classification, neglecting the spatial information. In this study, we argue that LCZ mapping should be considered as a scene classification task to fully exploit the environmental context. Fifteen cities covering 138 million population in three economic regions of China are selected as the study area. Sentinel-2 multispectral data with a 10 m spatial resolution are used to classify LCZs. A deep convolutional neural network composed of residual learning and the Squeeze-andExcitation block, namely the LCZNet, is proposed. We obtained an overall accuracy of 88.61% by using a large image (48x48 corresponding to 480x480 m(2)) as the representation of an LCZ, 7.5% higher than that using a small image representation (10x10) and nearly 20% higher than that obtained by the standard WUDAPT method. Image sizes from 32x32 to 64x64 were found suitable for LCZ mapping, while a deeper network achieved better classification with larger inputs. Compared with natural classes, urban classes benefited more from a large input size, as it can exploit the environment context of urban areas. The combined use of the training data from all three regions led to the best classification, but the transfer of LCZ models cannot achieve satisfactory results due to the domain shift. More advanced domain adaptation methods should be applied in this application.
机译:随着世界上最大的人口,在过去的四十年中经历了快速发展,现在拥有超过8亿的城市公民。虽然城市化导致社会社会和经济进步,但它们可能会面临其他问题,包括额外的热量和空气污染。局部气候区(LCZ)是一种为城市热岛研究开发的新概念,为城市环境提供了标准分类系统。 LCZS由城市环境的背景定义; LCZ的最小直径预计为400-1,000米,因此它可以对城市气候产生有效的影响。然而,大多数现有方法(例如,Wudapt方法)将此任务视为基于像素的分类,忽略了空间信息。在这项研究中,我们认为LCZ映射应被视为场景分类任务,以充分利用环境背景。将五十个城市占中国三个经济地区的13800万人口被选为研究区。 Hentinel-2具有10米空间分辨率的多光谱数据用于对LCZ进行分类。提出了一种由剩余学习和挤压和探测块组成的深度卷积神经网络,即LCZNET。通过使用大图像(对应480x480 m(2))作为LCZ的表示,获得了88.61%的总精度为LCZ的表示,比使用小图像表示(10x10)高出7.5%,近20%高于其由标准的wudapt方法获得。发现从32x32到64x64的图像尺寸适用于LCZ映射,而更深的网络以更大的输入实现了更好的分类。与自然课程相比,城市课程从大型输入规模中受益更多,因为它可以利用城市地区的环境背景。所有三个区域的培训数据的综合使用导致了最佳分类,但LCZ模型的转移由于域移位而无法实现令人满意的结果。在此应用程序中应应用更高级的域适配方法。

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