通过对抗性学习重塑城市配置的自动化城市规划:量化、生成和评估

IF 1.2 Q4 REMOTE SENSING ACM Transactions on Spatial Algorithms and Systems Pub Date : 2021-12-26 DOI:10.1145/3524302
Dongjie Wang, Yanjie Fu, Kunpeng Liu, Fanglan Chen, Pengyang Wang, Chang-Tien Lu
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引用次数: 7

摘要

城市规划是指在给定区域内设计土地利用配置的努力。然而,为了获得有效的城市规划,城市专家必须花费大量时间和精力,基于领域知识和个人经验分析复杂的规划约束。为了减轻他们的沉重负担并制定一致的城市规划,我们想问,人工智能能否加速城市规划过程,让人类规划者只根据特定需求调整生成的配置?深度生成模型的最新进展提供了一个可能的答案,它激励我们从对抗性学习的角度自动化城市规划。然而,出现了三大挑战:(1)如何定义定量的土地利用配置?(2) 如何自动化配置规划?(3) 如何评估生成配置的质量?在这篇文章中,我们系统地解决了这三个挑战。具体而言,(1)我们将土地利用配置定义为经纬度通道张量。(2) 我们将自动化城市规划问题转化为深度生成学习的任务。目标是在给定目标区域的周围上下文的情况下生成配置张量。特别是,我们首先使用从网站抓取的地理和人类流动数据来构建空间图,以学习图的表示。然后,我们将每个目标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)。接下来,我们开发了一个对抗性学习框架,其中生成器将周围的上下文表示作为输入来生成土地使用配置,鉴别器学习区分正样本和负样本。(3) 我们提供了定量评估指标,并进行了广泛的实验来证明我们的框架的有效性。
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Automated Urban Planning for Reimagining City Configuration via Adversarial Learning: Quantification, Generation, and Evaluation
Urban planning refers to the efforts of designing land-use configurations given a region. However, to obtain effective urban plans, urban experts have to spend much time and effort analyzing sophisticated planning constraints based on domain knowledge and personal experiences. To alleviate the heavy burden of them and produce consistent urban plans, we want to ask that can AI accelerate the urban planning process, so that human planners only adjust generated configurations for specific needs? The recent advance of deep generative models provides a possible answer, which inspires us to automate urban planning from an adversarial learning perspective. However, three major challenges arise: (1) how to define a quantitative land-use configuration? (2) how to automate configuration planning? (3) how to evaluate the quality of a generated configuration? In this article, we systematically address the three challenges. Specifically, (1) We define a land-use configuration as a longitude-latitude-channel tensor. (2) We formulate the automated urban planning problem into a task of deep generative learning. The objective is to generate a configuration tensor given the surrounding contexts of a target region. In particular, we first construct spatial graphs using geographic and human mobility data crawled from websites to learn graph representations. We then combine each target area and its surrounding context representations as a tuple, and categorize all tuples into positive (well-planned areas) and negative samples (poorly-planned areas). Next, we develop an adversarial learning framework, in which a generator takes the surrounding context representations as input to generate a land-use configuration, and a discriminator learns to distinguish between positive and negative samples. (3) We provide quantitative evaluation metrics and conduct extensive experiments to demonstrate the effectiveness of our framework.
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来源期刊
CiteScore
4.40
自引率
5.30%
发文量
43
期刊介绍: ACM Transactions on Spatial Algorithms and Systems (TSAS) is a scholarly journal that publishes the highest quality papers on all aspects of spatial algorithms and systems and closely related disciplines. It has a multi-disciplinary perspective in that it spans a large number of areas where spatial data is manipulated or visualized (regardless of how it is specified - i.e., geometrically or textually) such as geography, geographic information systems (GIS), geospatial and spatiotemporal databases, spatial and metric indexing, location-based services, web-based spatial applications, geographic information retrieval (GIR), spatial reasoning and mining, security and privacy, as well as the related visual computing areas of computer graphics, computer vision, geometric modeling, and visualization where the spatial, geospatial, and spatiotemporal data is central.
期刊最新文献
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