Rapid globalization and the interdependence of humanity that engender tremendous in-flow of human migration towards the urban spaces. With advent of high definition satellite images, high resolution data, computational methods such as deep neural network, capable hardware; urban planning is seeing a paradigm shift. Legacy data on urban environments are now being complemented with high-volume, high-frequency data. In this paper we propose a novel classification method that is readily usable for machine analysis and show applicability of the methodology on a developing world setting. The state-of-the-art is mostly dominated by classification of building structures, building types etc. and largely represents the developed world which are insufficient for developing countries such as Bangladesh where the surrounding is crucial for the classification. Moreover, the traditional methods propose small-scale classifications, which give limited information with poor scalability and are slow to compute. We categorize the urban area in terms of informal and formal spaces taking the surroundings into account. 50 km x 50 km Google Earth image of Dhaka, Bangladesh was visually annotated and categorized by an expert. The classification is based broadly on two dimensions: urbanization and the architectural form of urban environment. Consequently, the urban space is divided into four classes: 1) highly informal; 2) moderately informal; 3) moderately formal; and 4) highly formal areas. In total 16 sub-classes were identified. For semantic segmentation, Google's DeeplabV3+ model was used which increases the field of view of the filters to incorporate larger context. Image encompassing 70% of the urban space was used for training and the remaining 30% was used for testing and validation. The model is able to segment with 75% accuracy and 60% Mean IoU.
翻译:快速全球化和人类相互依存,导致人类大量流入城市空间。随着高定义卫星图像、高分辨率数据、深神经网络等计算方法的出现,高清晰度数据、有能力的硬件等计算方法的出现,城市规划正在出现范式转变。关于城市环境的遗留数据现在正在得到大量高频数据的补充。在本文中,我们提出了一个新的分类方法,很容易用于机器分析,并显示方法在发展中世界环境中的适用性。最新技术主要是建筑结构、建筑类型等的分类。它主要代表发达世界,而对于孟加拉国等发展中国家而言,这种计算方法还不够。此外,传统方法提出了小规模分类,而这种分类提供的信息可缩略小,而且比较缓慢。我们建议从非正式和正式空间的角度对城市地区进行分类,以机器分析为单位;孟加拉国达卡谷歌地球图像为50千米x50千米,由一位专家加以注解和分类。这一分类主要基于两个层面:城市化和城市环境建筑形式。因此,对于分类而言,对于分类而言,对于分类而言,其周围的环境对于分类至关重要。 传统方法提出了小规模的分类方法提出了小规模分类方法,提供了有限的缩略度信息, 并且使用了高缩缩缩的缩缩缩缩缩缩缩 。 用于 平的缩缩缩版段 1 和深层的缩缩缩缩缩缩缩缩的缩缩缩缩缩缩缩缩缩缩的校格 。使用 。使用为平的校内为平的校内为平段使用 。 。