생성형 AI 기반 초기설계단계 외관디자인 시각화 접근방안
Generative AI-based Exterior Building Design Visualization Approach in the Early Design Stage: Leveraging Architects’ Style-trained Models
- 한국BIM학회
- KIBIM Magazine
- 14권 2호
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2024.0613 - 24 (12 pages)
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DOI : 10.13161/kibim.2024.14.2.013
- 156
This research suggests a novel visualization approach utilizing Generative AI to render photorealistic architectural alternatives images in the early design phase. Photorealistic rendering intuitively describes alternatives and facilitates clear communication between stakeholders. Nevertheless, the conventional rendering process, utilizing 3D modelling and rendering engines, demands sophisticate model and processing time. In this context, the paper suggests a rendering approach employing the text-to-image method aimed at generating a broader range of intuitive and relevant reference images. Additionally, it employs an Text-to-Image method focused on producing a diverse array of alternatives reflecting architects’ styles when visualizing the exteriors of residential buildings from the mass model images. To achieve this, fine-tuning for architects’ styles was conducted using the Low-Rank Adaptation (LoRA) method. This approach, supported by fine-tuned models, allows not only single style-applied alternatives, but also the fusion of two or more styles to generate new alternatives. Using the proposed approach, we generated more than 15,000 meaningful images, with each image taking only about 5 seconds to produce. This demonstrates that the Generative AI-based visualization approach significantly reduces the labour and time required in conventional visualization processes, holding significant potential for transforming abstract ideas into tangible images, even in the early stages of design.
1. 서론
2. 이론적 고찰
3. 생성형 AI 기반 시각화
4. 생성형 AI 기반 건축 외관 시각화 방안
5. 결론
감사의 글
References
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