Bulletin of Surveying and Mapping ›› 2026, Vol. 0 ›› Issue (3): 156-161.doi: 10.13474/j.cnki.11-2246.2026.0326

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AIGC-empowered generation of rural architectural characteristics under geocultural spatial constraints: a case study of Zengcheng district in Guangzhou

DENG Maoying1, CAO Kaibin2,3, LIU Bohua2,3, LOU Yuting3,4, ZHAO Yuan2,3   

  1. 1. Guangzhou Municipal Planning and Natural Resources Bureau, Guangzhou 510000, China;
    2. Urban and Rural Institute (Guangzhou)Co., Ltd., Guangzhou 510000, China;
    3. Guangdong Engineering Technology Research Center of Intelligent Service of Urban and Rural Planning and Construction, Guangzhou 510000, China;
    4. Guangzhou Tujian Urban Planning, Survey and Design Co., Ltd., Guangzhou 510000, China
  • Received:2025-08-18 Published:2026-04-08

Abstract: With the deepening advancement of rural revitalization strategies,AIGC (artificial intelligence generated content),with its rapid response capabilities and diverse content generation,precisely meets the dynamic and differentiated needs of rural construction.It provides core support for preserving rural collective memory and cultural genes,shaping livable environments,and enhancing rural attractiveness.This study,taking Zengcheng district in Guangzhou as an empirical case,proposes a closed-loop technical framework of “feature cognition-feature learning-feature generation.”It systematically implements geo-cultural spatial gene decoding, construction of a multimodal dataset for vernacular architecture,and multi-scale scenario validation of AIGC generative models.The research explores synergistic mechanisms for AIGC-driven targeted generation of distinctive rural landscapes.Key outcomes include:①Achieved controllable landscape generation under cultural-geographical constraints; ②Established a three-tier advancement paradigm (data-algorithm-application); ③ Provided technical methodological support for rural cultural preservation and spatial governance in the AI era.

Key words: rural revitalization, AIGC, geocultural space, rural landscape, generative model, artificial intelligence

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