Generative early architectural visualizations: incorporating architect’s style-trained models

Author:

Lee Jin-Kook1ORCID,Yoo Youngjin1,Cha Seung Hyun2ORCID

Affiliation:

1. Department of Interior Architecture and Built Environment, Yonsei University , Seoul 03722 , Republic of Korea

2. Graduate School of Culture Technology, Korea Advanced Institute of Science and Technology (KAIST) , Daejeon 34141 , Republic of Korea

Abstract

Abstract This study introduces a novel approach to architectural visualization using generative artificial intelligence (AI), particularly emphasizing text-to-image technology, to remarkably improve the visualization process right from the initial design phase within the architecture, engineering, and construction industry. By creating more than 10 000 images incorporating an architect’s personal style and characteristics into a residential house model, the effectiveness of base AI models. Furthermore, various architectural styles were integrated to enhance the visualization process. This method involved additional training for styles with low similarity rates, which required extensive data preparation and their integration into the base AI model. Demonstrated to be effective across multiple scenarios, this technique markedly enhances the efficiency and speed of production of architectural visualization images. Highlighting the vast potential of AI in design visualization, our study emphasizes the technology’s shift toward facilitating more user-centered and personalized design applications.

Funder

KAIA

Ministry of Land, Infrastructure and Transport

National Research Foundation of Korea

Publisher

Oxford University Press (OUP)

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