2023
DOI: 10.52842/conf.ecaade.2023.2.431
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Building-GNN: Exploring a co-design framework for generating controllable 3D building prototypes by graph and recurrent neural networks

Ximing Zhong,
Immanuel Koh,
Pia Fricker

Abstract: This paper discusses a novel deep learning (DL)framework named Building-GNN, which combines the Graph Neural Network (GNN) and the Recurrent neural network (RNN) to address the challenge of generating a controllable 3D voxel building model. The aim is to enable architects and AI to jointly explore the shape and internal spatial planning of 3D building models, forming a co-design paradigm. While the 3D results of previous DL methods, such as 3DGAN, are challenging to control in detail and meet the constraints a… Show more

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