From Heuristics to Data: Quantifying Site Planning Layout Indicators with Deep Learning and Multi-Modal Data
Qian Cao, Jielin Chen, Junchao Zhao, Rudi Stouffs

TL;DR
This paper introduces SPLI, a comprehensive data-driven system that quantifies urban site planning layouts using multi-source data and deep learning, enhancing analysis of spatial organization and land-use efficiency.
Contribution
It develops a novel multi-dimensional indicator system integrating heterogeneous data and deep learning to systematically quantify urban site planning layouts.
Findings
Improved accuracy in hierarchical building function classification.
Enhanced capability to quantify spatial organization patterns.
Standardized metrics for urban spatial analytics.
Abstract
The spatial layout of urban sites shapes land-use efficiency and spatial organization. Traditional site planning often relies on experiential judgment and single-source data, limiting systematic quantification of multifunctional layouts. We propose a Site Planning Layout Indicator (SPLI) system, a data-driven framework integrating empirical knowledge with heterogeneous multi-source data to produce structured urban spatial information. The SPLI supports multimodal spatial data systems for analytics, inference, and retrieval by combining OpenStreetMap (OSM), Points of Interest (POI), building morphology, land use, and satellite imagery. It extends conventional metrics through five dimensions: (1) Hierarchical Building Function Classification, refining empirical systems into clear hierarchies; (2) Spatial Organization, quantifying seven layout patterns (e.g., symmetrical, concentric,…
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Taxonomy
TopicsBIM and Construction Integration · 3D Surveying and Cultural Heritage
