Author
Listed:
- Eunseok Jang
(Department of Architecture, Konkuk University, Seoul 05029, Republic of Korea)
- Kyunghwan Kim
(Department of Architecture, Konkuk University, Seoul 05029, Republic of Korea)
Abstract
Generative AI has advanced rapidly in architectural design; however, existing building footprint generation models tend to emphasize stylistic exploration while insufficiently integrating site context as a fundamental physical constraint that facilitates alignment with the surrounding urban fabric. To address this limitation, this study proposes a context-responsive methodology for generating building footprints using a multi-layered four-channel representation of site conditions—including roads, sidewalks, adjacent buildings, and site boundaries—within a Latent Diffusion Model framework. The proposed approach encodes these physical conditions into a structured tensor and concatenates them directly to the U-Net input, enabling site context to function as an explicit spatial control variable during generation. An ablation study evaluated the effectiveness of the proposed contextual configuration. Compared with a single-channel model, the four-channel model achieved an 18.08% reduction in average pixel-wise information entropy, indicating a measurable decrease in generative uncertainty. Qualitative analyses further demonstrated that the enriched contextual input promotes geometrically coherent footprint configurations, such as context-responsive setbacks and spatial alignment with surrounding built forms. These findings suggest that structured multi-channel site information enhances contextual grounding in generative design processes and may contribute to more environmentally integrated and spatially coherent architectural outcomes.
Suggested Citation
Eunseok Jang & Kyunghwan Kim, 2026.
"Context-Responsive Building Footprint Generation via Conditional Inpainting Using Latent Diffusion Models,"
Sustainability, MDPI, vol. 18(8), pages 1-22, April.
Handle:
RePEc:gam:jsusta:v:18:y:2026:i:8:p:3987-:d:1922110
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