首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >CLASSIFICATION OF THE STRUCTURE OF CITIES THROUGH MID-RESOLUTION SATELLITE IMAGERY AND PATCH BASED NEURAL NETWORKS
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CLASSIFICATION OF THE STRUCTURE OF CITIES THROUGH MID-RESOLUTION SATELLITE IMAGERY AND PATCH BASED NEURAL NETWORKS

机译:通过中分辨率卫星图像和基于补丁的神经网络对城市结构进行分类

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The studies in the classification of the urban spatial structure have been essential in deriving insights into the land cover and the built typology which helped in the estimation of energy consumption patterns, urban density, compactness, and hierarchy of settlements. However, the analysis and comparison of the physical forms of the cities have been attempted in a piecemeal fashion where the requirement of datasets and the computation power for analysis has been a major hindrance. With the advancement in machine learning based techniques, large datasets such as satellite imagery can be studied with advanced computer vision methods. These solutions may help in studying the intricate nature of human habitats in large extents of geographical areas including various urban areas. This study utilizes smaller patches of medium resolution Sentinel-2B Imagery of ten different cities in India to explore the urban forms present in these cities. This study uses Stacked Convolutional Autoencoder (CAE) to reduce the dimensionality of satellite imagery patches and unsupervised clustering techniques such as t-SNE and K-means to study the characteristics of similar patches. On analyzing the clusters through visual exploration, similar patches are delineated and provided with corresponding labels representing urban forms. Individual clusters are then studied with respect to each city. The motive of the study is to gain insights into the different types of morphological patterns present within and among cities.
机译:对城市空间结构分类的研究对于得出有关土地覆盖和建筑类型的见解至关重要,这有助于估计能源消耗模式,城市密度,紧凑性和住区等级。然而,已经尝试了对城市物理形态的分析和比较,其中数据集的需求和分析的计算能力成为主要障碍。随着基于机器学习的技术的进步,可以使用先进的计算机视觉方法研究大型数据集,例如卫星图像。这些解决方案可能有助于研究包括城市区域在内的大部分地理区域中人类栖息地的复杂性。这项研究利用印度十个不同城市的中分辨率Sentinel-2B影像的较小区域来探索这些城市中存在的城市形态。这项研究使用堆叠卷积自动编码器(CAE)来降低卫星图像补丁的维数,并使用无监督的聚类技术(例如t-SNE和K-means)来研究相似补丁的特征。通过视觉探索分析聚类时,会划定相似的斑块,并提供代表城市形态的相应标签。然后针对每个城市研究各个集群。这项研究的目的是了解城市内部和城市之间存在的不同类型的形态模式。

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