Design across multi-scale datasets by developing a novel approach to 3DGANs

IF 1.6 0 ARCHITECTURE
Benjamin Ennemoser, Ingrid Mayrhofer-Hufnagl
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引用次数: 0

Abstract

The development of Generative Adversarial Networks (GANs) has accelerated the research of Artificial Intelligence (AI) in architecture as a generative tool. However, since their initial invention, many versions have been developed that only focus on 2D image datasets for training and images as output. The current state of 3DGAN research has yielded promising results. However, these contributions focus primarily on building mass, extrusion of 2D plans, or the overall shape of objects. In comparison, our newly developed 3DGAN approach, using fully spatial building datasets, demonstrates that unprecedented interconnections across different scales are possible resulting in unconventional spatial configurations. Unlike a traditional design process, based on analyzing only a few precedents (typology) according to the task, by collaborating with the machine we can draw on a significantly wider variety of buildings across multiple typologies. In addition, the dataset was extended beyond the scale of complete buildings and involved building components that define space. Thus, our results achieve a high spatial diversity. A detailed analysis of the results also revealed new hybrid architectural elements illustrating that the machine continued the interconnections of scale since elements were not explicitly part of the dataset, becoming a true design collaborator.
通过开发一种新的3dgan方法设计跨多尺度数据集
生成对抗网络(GANs)的发展加速了人工智能(AI)作为生成工具在建筑领域的研究。然而,自从他们最初的发明以来,已经开发了许多版本,只关注用于训练和输出图像的2D图像数据集。目前3DGAN的研究已经取得了可喜的成果。然而,这些贡献主要集中在建筑质量、二维平面的挤压或物体的整体形状上。相比之下,我们新开发的3DGAN方法,使用全空间建筑数据集,证明了不同尺度上前所未有的相互连接可能导致非常规的空间配置。与传统的设计过程不同,根据任务分析少数先例(类型学),通过与机器合作,我们可以在多种类型学中绘制更广泛的建筑。此外,数据集的扩展超出了完整建筑的规模,并涉及定义空间的建筑组件。因此,我们的结果达到了很高的空间多样性。对结果的详细分析还揭示了新的混合建筑元素,说明机器继续了规模的相互联系,因为元素不是数据集的明确组成部分,成为真正的设计合作者。
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来源期刊
CiteScore
3.20
自引率
17.60%
发文量
44
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