Automated Urban Planning for Reimagining City Configuration via Adversarial Learning: Quantification, Generation, and Evaluation

Author:

Wang Dongjie1,Fu Yanjie1,Liu Kunpeng1,Chen Fanglan2,Wang Pengyang3,Lu Chang-Tien4

Affiliation:

1. University of Central Florida, Orlando, FL

2. Virginia Tech, Falls Church

3. University of Macau, Macau, China

4. Virginia Tech, Falls Church, VA

Abstract

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.

Funder

National Science Foundation

Publisher

Association for Computing Machinery (ACM)

Subject

Discrete Mathematics and Combinatorics,Geometry and Topology,Computer Science Applications,Modeling and Simulation,Information Systems,Signal Processing

Reference59 articles.

1. David Adams. 1994. Urban Planning and the Development Process. Psychology Press.

2. Samet Akcay, Amir Atapour-Abarghouei, and Toby P. Breckon. 2018. Ganomaly: Semi-supervised anomaly detection via adversarial training. In Proceedings of the Asian Conference on Computer Vision. Springer, 622–637.

3. Modeling Urbanization Patterns with Generative Adversarial Networks

4. Proceedings of the 34th International Conference on Machine Learning;Arjovsky Martin,2017

5. Spatio-Temporal Data Mining

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