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Inspiration Mining for Carbon Concrete Design – through Machine Learning and Artistic Creativity

Sebastian Wiesenhütter, Reimar Unger, Jörg Noennig

Abstract

This paper targets a new support process for inspiration in civil engineering design. First the notion of inspiration within the engineering design process is briefly explained, and existing approaches for automated creativity support are reviewed. Further the definition and procedural layout of the “inspiration mining” process is introduced, and hypotheses on “inspiration objects” and key processes (matching of inspiration objects and engineering tasks) are formulated. The semantic and visual distance of these objects to the engineering challenge is a crucial factor and needs to be quantified to retrieve relevant concepts. In order to map visual similarity within a sample from the WikiArt dataset, we train a Convolutional Neural Network in an autoencoder setup on the data. The generated image embedding is used to compare it to the approach of Transfer Learning on the same dataset by a pre-trained neural network model (VGG19 on ImageNet dataset).
OriginalspracheEnglisch
TitelConcrete Innovation for Sustainability
UntertitelProceedings of the 6th fib International Congress 2022
Redakteure/-innenStine Stokkeland, Henny Cathrine Braarud
ErscheinungsortOslo
Seiten1137–1146
Seitenumfang10
ISBN (elektronisch)978-2-940643-15-8
PublikationsstatusVeröffentlicht - 2022
Extern publiziertJa
Veranstaltung6th fib International Congress on Concrete Innovation for Sustainability - Oslo, Norwegen
Dauer: 12 Juni 202216 Juni 2022

Publikationsreihe

Namefib symposium proceedings
ISSN (elektronisch)2617-4820

Tagung/Konferenz

Tagung/Konferenz6th fib International Congress on Concrete Innovation for Sustainability
Land/GebietNorwegen
OrtOslo
Zeitraum12/06/2216/06/22

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