Automated Urban Planning aware Spatial Hierarchies and Human Instructions
Dongjie Wang, Kunpeng Liu, Yanyong Huang, Leilei Sun, Bowen Du, and, Yanjie Fu

TL;DR
This paper introduces a deep, human-instructed urban planning framework using GANs that captures spatial hierarchies and human requirements, improving the stability and quality of automated urban plans.
Contribution
It proposes a cascading GAN-based deep generative framework with a conditioning augmentation module to better model urban spatial hierarchies and human instructions.
Findings
Improved stability in urban plan generation.
Effective modeling of spatial hierarchies and human instructions.
Validated through extensive experiments.
Abstract
Traditional urban planning demands urban experts to spend considerable time and effort producing an optimal urban plan under many architectural constraints. The remarkable imaginative ability of deep generative learning provides hope for renovating urban planning. While automated urban planners have been examined, they are constrained because of the following: 1) neglecting human requirements in urban planning; 2) omitting spatial hierarchies in urban planning, and 3) lacking numerous urban plan data samples. To overcome these limitations, we propose a novel, deep, human-instructed urban planner. In the preliminary work, we formulate it into an encoder-decoder paradigm. The encoder is to learn the information distribution of surrounding contexts, human instructions, and land-use configuration. The decoder is to reconstruct the land-use configuration and the associated urban functional…
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Taxonomy
TopicsLand Use and Ecosystem Services · Urban Design and Spatial Analysis
