Space Syntax-guided Post-training for Residential Floor Plan Generation
Zhuoyang Jiang, Dongqing Zhang

TL;DR
This paper introduces SSPT, a novel framework that uses space syntax analysis as feedback to improve the configurational quality of generated residential floor plans, integrating architectural theory into AI models.
Contribution
It presents SSPT, including the SSIO measurement tool and two post-training strategies, enhancing spatial configurational alignment in floor plan generation.
Findings
Both SSPT strategies improve public-space dominance and hierarchy.
SSPT-PPO outperforms iterative retraining in efficiency and stability.
Output-side evaluation enables practical architectural theory integration.
Abstract
Residential floor plan generation requires not only geometric fidelity but also spatial configurational logic: shared living spaces should be integrative, while private spaces should remain segregated. Existing generators increasingly use room-relation graphs as input-side conditions, but generated layouts are rarely evaluated on the output side for configurational quality, and such evaluation is rarely fed back into model optimization. We propose Space Syntax-guided Post-training (SSPT), a framework that turns space-syntax integration from a post-hoc analysis tool into a computable feedback signal for already-trained floor plan generators. SSPT introduces the Space Syntax Integration Oracle (SSIO), which converts generated layouts into rectangle-space graphs and measures public-space dominance and functional hierarchy. SSIO is first applied to real residential data to establish…
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