传统建筑装饰设计的结构意识稳定扩散

IF 4.9
Jianhong Yang , Guoyong Wang
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引用次数: 0

摘要

传统建筑风格的智能生成在结构完整性和风格一致性方面面临着重大挑战。虽然现有的方法可以生成大量逼真的图像,但缺乏对传统建筑装饰设计中结构元素的深刻理解。本文提出了一个结构感知的稳定扩散(SSD)模型,该模型通过三个关键创新增强了模型对建筑特征的理解。首先,设计了结构感知特征注入模块,在U-net上采样阶段将提取的建筑结构信息与原始特征自适应融合,增强模型对几何结构的理解;其次,引入结构化描述与原始描述相结合的双路径文本增强策略,为生成过程提供更丰富的文本引导信号。最后,我们设计了一种渐进式注入策略,通过余弦调度动态控制结构信息的注入强度,最终实现结构知识的有效内化。实验结果表明,与现有方法相比,该模型有效地提高了生成的传统建筑装饰的多样性和结构的合理性,为传统建筑装饰设计提供了一种有效的新技术途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Structure-aware stable diffusion for traditional architectural decoration design
The intelligent generation of traditional architectural styles faces significant challenges in structural integrity and style consistency. While existing methods can generate numerous realistic images, they lack a deep understanding of structural elements in traditional architectural decorative design. This paper proposes a Structure-aware Stable Diffusion (SSD) model, which enhances the model's comprehension of architectural features through three key innovations. First, we design a structure-aware feature injection module that adaptively fuses extracted architectural structural information with original features during the U-net upsampling phase, enhancing the model's understanding of geometric structures. Second, we introduce a dual-path text enhancement strategy that combines structural descriptions with original descriptions to provide richer textual guidance signals for the generation process. Finally, we design a progressive injection strategy that dynamically controls the injection intensity of structural information through cosine scheduling, ultimately achieving effective internalization of structural knowledge. Experimental results show that compared to existing methods, our model effectively improves both the diversity of generated traditional architectural decorations and the rationality of their structures, thus providing an effective new technical approach for traditional architectural decorative design.
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来源期刊
Machine learning with applications
Machine learning with applications Management Science and Operations Research, Artificial Intelligence, Computer Science Applications
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