Cities are complex products of human culture, characterised by a startling diversity of visible traits. Their form is constantly evolving, reflecting changing human needs and local contingencies, manifested in space by many urban patterns. Urban Morphology laid the foundation for understanding many such patterns, largely relying on qualitative research methods to extract distinct spatial identities of urban areas. However, the manual, labour-intensive and subjective nature of such approaches represents an impediment to the development of a scalable, replicable and data-driven urban form characterisation. Recently, advances in Geographic Data Science and the availability of digital mapping products, open the opportunity to overcome such limitations. And yet, our current capacity to systematically capture the heterogeneity of spatial patterns remains limited in terms of spatial parameters included in the analysis and hardly scalable due to the highly labour-intensive nature of the task. In this paper, we present a method for numerical taxonomy of urban form derived from biological systematics, which allows the rigorous detection and classification of urban types. Initially, we produce a rich numerical characterisation of urban space from minimal data input, minimizing limitations due to inconsistent data quality and availability. These are street network, building footprint, and morphological tessellation, a spatial unit derivative of Voronoi tessellation, obtained from building footprints. Hence, we derive homogeneous urban tissue types and, by determining overall morphological similarity between them, generate a hierarchical classification of urban form. After framing and presenting the method, we test it on two cities - Prague and Amsterdam - and discuss potential applications and further developments.
翻译:城市病理学为了解许多此类模式奠定了基础,主要依靠定性研究方法来获取城市地区不同的空间特征;然而,这些方法的手工、劳动密集型和主观性质阻碍了发展可扩展、可复制和数据驱动的城市形态特征;最近,地理数据科学的进步和数字制图产品的提供,为克服这些限制打开了机遇;然而,我们目前系统地捕捉空间模式的异质性发展的能力仍然有限,因为分析中包含的空间参数,而且由于任务具有高度劳动密集型的性质,因此几乎无法伸缩。在本文件中,我们介绍了从生物系统中得出的城市形态数字分类方法,该方法能够对城市类型进行严格的检测和分类。首先,我们从最低限度的数据输入和数字性制图产品中产生了丰富的数字化城市空间的特征化,为克服这些限制打开了机会。然而,我们目前系统地捕捉空间模式的异性发展仍然能力有限,因为分析中包含了空间参数,而且由于任务的高度劳动密集型性质,因此很难使城市结构结构结构结构结构形成一种类似的结构,我们从街头网络、足迹和结构结构学类型中得出了城市形态,从而得出了城市结构结构结构结构结构结构学的模型。