利用几何增强图形扩散推进建筑平面图设计

Sizhe Hu, Wenming Wu, Yuntao Wang, Benzhu Xu, Liping Zheng
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引用次数: 0

摘要

建筑平面图设计自动化对于住宅和室内设计至关重要,它为建筑师提供了一种更快、更经济的手工草图替代方法。然而,现有的方法,包括基于规则的方法和基于学习的方法,都面临着设计复杂性和生成受限以及大量后处理的挑战,而且往往会出现明显的几何不一致性,如错位、重叠和间隙。在这项工作中,我们提出了一种通过结构图生成矢量平面图设计的新型生成框架,称为 GSDiff,重点关注墙体交界处生成和墙体分段预测,以捕捉结构图的几何和语义方面。为了提高生成的结构图的几何合理性,我们提出了两种创新的几何增强方法。在墙体交界处生成中,我们提出了一种新颖的对齐损失函数来提高几何一致性。在墙体分段预测中,我们提出了一种随机自我监督方法,以增强模型对整体几何结构的感知,从而促进生成合理的几何结构。利用扩散模型和变换器模型以及几何增强策略,我们的框架可以生成具有结构和语义信息的墙体连接点、墙体分段和房间多边形,从而生成能够准确表示平面图的结构图。广泛的实验表明,所提出的方法超越了现有技术,实现了自由生成和受约束生成,标志着建筑设计向结构生成的转变。
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Advancing Architectural Floorplan Design with Geometry-enhanced Graph Diffusion
Automating architectural floorplan design is vital for housing and interior design, offering a faster, cost-effective alternative to manual sketches by architects. However, existing methods, including rule-based and learning-based approaches, face challenges in design complexity and constrained generation with extensive post-processing, and tend to obvious geometric inconsistencies such as misalignment, overlap, and gaps. In this work, we propose a novel generative framework for vector floorplan design via structural graph generation, called GSDiff, focusing on wall junction generation and wall segment prediction to capture both geometric and semantic aspects of structural graphs. To improve the geometric rationality of generated structural graphs, we propose two innovative geometry enhancement methods. In wall junction generation, we propose a novel alignment loss function to improve geometric consistency. In wall segment prediction, we propose a random self-supervision method to enhance the model's perception of the overall geometric structure, thereby promoting the generation of reasonable geometric structures. Employing the diffusion model and the Transformer model, as well as the geometry enhancement strategies, our framework can generate wall junctions, wall segments and room polygons with structural and semantic information, resulting in structural graphs that accurately represent floorplans. Extensive experiments show that the proposed method surpasses existing techniques, enabling free generation and constrained generation, marking a shift towards structure generation in architectural design.
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