User: Guest  Login
Title:

Autocompletion of Design Data in Semantic Building Models using Link Prediction and Graph Neural Networks

Document type:
Konferenzbeitrag
Author(s):
Eisenstadt, Viktor; Bielski, Jessica; Langenhan, Christoph; Althoff, Klaus-Dieter; Langenhan, Christoph; Dengel, Andreas
Abstract:
This paper presents an approach for AI-based autocompletion of graph-based spatial configurations using deep learning in the form of link prediction through graph neural networks. The main goal of the research presented is to estimate the probability of connections between the rooms of the spatial configuration graph at hand using the available semantic information. In the context of early design stages, deep learning-based prediction of spatial connections helps to make the design process...     »
Keywords:
LOCenter; Spatial Configuration, Autocompletion, Link Prediction, Deep Learning
Editor:
Pak, B; Wurzer, G; Stouffs, R
Book / Congress title:
Education and research in Computer Aided Architectural Design in Europe Conference
Volume:
1
Publisher:
KU Leuven Technology Campus, Ghent/Belgium
Publisher address:
Ghent, Belgium
Year:
2022
Pages:
501-510
Bookseries title:
eCAADe
Bookseries volume:
40
 BibTeX