SimilarityNet: A Deep Neural Network for Similarity Analysis Within Spatio-temporal Ensembles

Huesmann K.; Linsen L.

Research article (journal) | Peer reviewed

Abstract

Latent feature spaces of deep neural networks are frequently used to effectively capture semantic characteristics of a given dataset. In the context of spatio-temporal ensemble data, the latent space represents a similarity space without the need of an explicit definition of a field similarity measure. Commonly, these networks are trained for specific data within a targeted application. We instead propose a general training strategy in conjunction with a deep neural network architecture, which is readily applicable to any spatio-temporal ensemble data without re-training. The latent-space visualization allows for a comprehensive visual analysis of patterns and temporal evolution within the ensemble. With the use of SimilarityNet, we are able to perform similarity analyses on large-scale spatio-temporal ensembles in less than a second on commodity consumer hardware. We qualitatively compare our results to visualizations with established field similarity measures to document the interpretability of our latent space visualizations and show that they are feasible for an in-depth basic understanding of the underlying temporal evolution of a given ensemble.

Details about the publication

JournalComputer Graphics Forum
Volume41
Issue3
Page range379-389
StatusPublished
Release year2022
Language in which the publication is writtenEnglish
DOI10.1111/cgf.14548
Link to the full texthttps://api.elsevier.com/content/abstract/scopus_id/85136308271
KeywordsEnsemble Visualization, Deep Learning

Authors from the University of Münster

Huesmann, Karim
Professorship for Practical Computer Science (Prof. Linsen)
Linsen, Lars
Professorship for Practical Computer Science (Prof. Linsen)