Publication Details

Category Text Publication
Reference Category Book chapters
DOI 10.15439/2023F8069
Title (Primary) Comparison of deep learning architectures for three different multispectral imaging flow cytometry datasets
Title (Secondary) Position Papers of the of the 18th Conference on Computer Science and Intelligence Systems, Warsaw, Poland, 17–20 September, 2023
Author Krajsic, P.; Hornick, T.; Dunker, S.
Publisher Ganzha, M.; Maciaszek, L.; Paprzycki, M.; Ślęzak, D.
Source Titel Annals of Computer Science and Information Systems
Year 2023
Department PHYDIV
Volume 36
Page From 59
Page To 66
Language englisch
Topic T5 Future Landscapes
Keywords Computer Vision; Classification; Deep Learning; Multispectral Imaging Flow Cytometry
Abstract Multispectral imaging flow cytometry (MIFC) is capable of capturing thousands of microscopic multispectral cell images per second. Deep Learning Algorithms in combination with MIFC are currently applied in different areas such as classifying blood cell morphologies, phytoplankton cells of water samples or pollen from air samples or pollinators. The goal of this work is to train classifiers for automatic and fast processing of new samples to avoid labor-intensive and error-prone manual gating and analyses and to ensure rigor of the results. In this study we compare state of the art Deep Learning architectures for the use case of multispectral image classification on datasets from three different domains to determine whether there is a suitable architecture for all applications or if a domain-specific architecture is required. Experiments have shown that there are multiple Convolutional Neural Network (CNN) architectures that show comparable results with regard to the evaluation criteria accuracy and computational effort. A single architecture that outperforms other architectures in all three domains could not be found.
Persistent UFZ Identifier https://www.ufz.de/index.php?en=20939&ufzPublicationIdentifier=28051
Krajsic, P., Hornick, T., Dunker, S. (2023):
Comparison of deep learning architectures for three different multispectral imaging flow cytometry datasets
In: Ganzha, M., Maciaszek, L., Paprzycki, M., Ślęzak, D. (eds.)
Position Papers of the of the 18th Conference on Computer Science and Intelligence Systems, Warsaw, Poland, 17–20 September, 2023
Annals of Computer Science and Information Systems 36
Polish Information Processing Society, Warsaw, p. 59 - 66 10.15439/2023F8069