ReCo: A Dataset for Residential Community Layout Planning
Xi Chen, Yun Xiong, Siqi Wang, Haofen Wang, Tao Sheng, Yao Zhang, Yu, Ye

TL;DR
ReCo is the first large-scale open-source dataset of residential community layouts, designed to facilitate research in automated urban design, spatial pattern recognition, and intelligent planning using deep learning methods.
Contribution
Introduces the ReCo dataset, the largest open-source vector dataset of residential community layouts, enabling data-driven urban planning research and applications.
Findings
Validated the dataset's utility with GAN-based layout generation
Facilitated research in morphological pattern recognition
Supported various urban design tasks with the dataset
Abstract
Layout planning is centrally important in the field of architecture and urban design. Among the various basic units carrying urban functions, residential community plays a vital part for supporting human life. Therefore, the layout planning of residential community has always been of concern, and has attracted particular attention since the advent of deep learning that facilitates the automated layout generation and spatial pattern recognition. However, the research circles generally suffer from the insufficiency of residential community layout benchmark or high-quality datasets, which hampers the future exploration of data-driven methods for residential community layout planning. The lack of datasets is largely due to the difficulties of large-scale real-world residential data acquisition and long-term expert screening. In order to address the issues and advance a benchmark dataset for…
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Taxonomy
TopicsUrban Design and Spatial Analysis · Land Use and Ecosystem Services
