Reimagining City Configuration: Automated Urban Planning via Adversarial Learning

Dongjie Wang, Yanjie Fu, Pengyang Wang, B. Huang, Chang-Tien Lu
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引用次数: 17

Abstract

Urban planning refers to the efforts of designing land-use configurations. Effective urban planning can help to mitigate the operational and social vulnerability of a urban system, such as high tax, crimes, traffic congestion and accidents, pollution, depression, and anxiety. Due to the high complexity of urban systems, such tasks are mostly completed by professional planners. But, human planners take longer time. The recent advance of deep learning motivates us to ask: can machines learn at a human capability to automatically and quickly calculate land-use configuration, so human planners can finally adjust machine-generated plans for specific needs? To this end, we formulate the automated urban planning problem into a task of learning to configure land-uses, given the surrounding spatial contexts. To set up the task, we define a land-use configuration as a longitude-latitude-channel tensor, where each channel is a category of POIs and the value of an entry is the number of POIs. The objective is then to propose an adversarial learning framework that can automatically generate such tensor for an unplanned area. In particular, we first characterize the contexts of surrounding areas of an unplanned area by learning representations from spatial graphs using geographic and human mobility data. Second, we combine each unplanned area and its surrounding context representation as a tuple, and categorize all the tuples into positive (well-planned areas) and negative samples (poorly-planned areas). Third, we develop an adversarial land-use configuration approach, where the surrounding context representation is fed into a generator to generate a land-use configuration, and a discriminator learns to distinguish among positive and negative samples. Finally, we devise two new measurements to evaluate the quality of land-use configurations and present extensive experiment and visualization results to demonstrate the effectiveness of our method.
重新构想城市结构:通过对抗性学习实现的自动化城市规划
城市规划是指土地利用形态的设计。有效的城市规划有助于减轻城市系统的运营和社会脆弱性,如高税收、犯罪、交通拥堵和事故、污染、抑郁和焦虑。由于城市系统的高度复杂性,这些任务大多由专业规划师完成。但是,人类的规划者需要更长的时间。深度学习的最新进展促使我们提出这样的问题:机器是否能够学习人类自动快速计算土地使用配置的能力,从而使人类规划者最终能够根据特定需求调整机器生成的计划?为此,我们将自动化城市规划问题制定为学习配置土地用途的任务,并考虑到周围的空间背景。为了设置任务,我们将土地利用配置定义为经纬度通道张量,其中每个通道是poi的一个类别,条目的值是poi的数量。然后,我们的目标是提出一个对抗性学习框架,该框架可以自动为非规划区域生成这样的张量。特别是,我们首先通过使用地理和人类流动性数据学习空间图的表示来表征非计划区周围区域的背景。其次,我们将每个未规划区域及其周围的上下文表示组合为一个元组,并将所有元组分类为正样本(规划良好的区域)和负样本(规划不良的区域)。第三,我们开发了一种对抗性土地利用配置方法,将周围的上下文表示馈送到生成器中以生成土地利用配置,鉴别器学习区分正样本和负样本。最后,我们设计了两个新的测量方法来评估土地利用配置的质量,并提供了大量的实验和可视化结果来证明我们方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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