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The “Paris-End” of Town? Deriving Urban Typologies Using Three Imagery Types

机译:镇的“巴黎末端”?使用三种图像类型衍生城市类型

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Urban typologies allow areas to be categorised according to form and the social, demographic, and political uses of the areas. The use of these typologies and finding similarities and dissimilarities between cities enables better targeted interventions for improved health, transport, and environmental outcomes in urban areas. A better understanding of local contexts can also assist in applying lessons learned from other cities. Constructing urban typologies at a global scale through traditional methods, such as functional or network analysis, requires the collection of data across multiple political districts, which can be inconsistent and then require a level of subjective classification. To overcome these limitations, we use neural networks to analyse millions of images of urban form (consisting of street view, satellite imagery, and street maps) to find shared characteristics between the largest 1692 cities in the world. The comparison city of Paris is used as an exemplar and we perform a case study using two Australian cities, Melbourne and Sydney, to determine if a Paris-end of town exists or can be found in these cities using these three big data imagery sets. The results show specific advantages and disadvantages of each type of imagery in constructing urban typologies. Neural networks trained with map imagery will be highly influenced by the structural mix of roads, public transport, and green and blue space. Satellite imagery captures a combination of both urban form and decorative and natural details. The use of street view imagery emphasises the features of a human-scaled visual geography of streetscapes. However, for both satellite and street view imagery to be highly effective, a reduction in scale and more aggressive pre-processing might be required in order to reduce detail and create greater abstraction in the imagery.
机译:城市类型允许根据形式和社会,人口统计和政治用途进行分类的区域。使用这些类型和寻找城市之间的相似性和异化性使得能够改善城市地区的健康,运输和环境成果的更好的有针对性的干预措施。更好地了解当地背景,还可以帮助应用来自其他城市的经验教训。通过传统方法构建全球规模的城市类型,例如功能或网络分析,需要跨多个政治区的数据集合,这可能不一致,然后需要一定程度的主观分类。为了克服这些限制,我们使用神经网络来分析数百万的城市形式图像(由街景,卫星图像和街道地图组成),以找到世界上最大的1692个城市之间的共同特征。巴黎的比较城市被用作示例,我们使用两个澳大利亚城市,墨尔本和悉尼进行案例研究,以确定城镇的巴黎末端是否存在,或者可以使用这三个大数据图像套装在这些城市中找到。结果表明,构建城市类型的各种图像的特定优缺点。用地图图像接受培训的神经网络将受到道路,公共交通和绿色和蓝色空间的结构组合的影响。卫星图像捕获城市形态和装饰和自然细节的组合。街景图像的使用强调了人类缩放视觉地理的特点。然而,对于卫星和街道视图图像非常有效,可能需要降低规模和更具侵略性的预处理,以便减少细节并在图像中创造更大的抽象。

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