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  5. OSS-Net: Memory Efficient High Resolution Semantic Segmentation of 3D Medical Data
 
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2021
Zweitveröffentlichung
Konferenzveröffentlichung
Verlagsversion

OSS-Net: Memory Efficient High Resolution Semantic Segmentation of 3D Medical Data

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Hauptpublikation
1488.pdf
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TUDa URI
tuda/12899
URN
urn:nbn:de:tuda-tuprints-289145
DOI
10.26083/tuprints-00028914
Autor:innen
Reich, Christoph ORCID 0000-0002-8616-1627
Prangemeier, Tim ORCID 0000-0003-4236-8746
Cetin, Oezdemir
Koeppl, Heinz ORCID 0000-0002-8305-9379
Kurzbeschreibung (Abstract)

Convolutional neural networks (CNNs) are the current state-of-the-art meta-algorithm for volumetric segmentation of medical data, for example, to localize COVID-19 infected tissue on computer tomography scans or the detection of tumour volumes in magnetic resonance imaging. A key limitation of 3D CNNs on voxelised data is that the memory consumption grows cubically with the training data resolution. Occupancy networks (O-Nets) are an alternative for which the data is represented continuously in a function space and 3D shapes are learned as a continuous decision boundary. While O-Nets are significantly more memory efficient than 3D CNNs, they are limited to simple shapes, are relatively slow at inference, and have not yet been adapted for 3D semantic segmentation of medical data. Here, we propose Occupancy Networks for Semantic Segmentation (OSS-Nets) to accurately and memory-efficiently segment 3D medical data. We build upon the original O-Net with modifications for increased expressiveness leading to improved segmentation performance comparable to 3D CNNs, as well as modifications for faster inference. We leverage local observations to represent complex shapes and prior encoder predictions to expedite inference. We showcase OSS-Net's performance on 3D brain tumour and liver segmentation against a function space baseline (O-Net), a performance baseline (3D residual U-Net), and an efficiency baseline (2D residual U-Net). OSS-Net yields segmentation results similar to the performance baseline and superior to the function space and efficiency baselines. In terms of memory efficiency, OSS-Net consumes comparable amounts of memory as the function space baseline, somewhat more memory than the efficiency baseline and significantly less than the performance baseline. As such, OSS-Net enables memory-efficient and accurate 3D semantic segmentation that can scale to high resolutions.

Freie Schlagworte

3d semantic segmentat...

segmentation

3d vision

medical imaging

3d imaging

brain segmentation

liver segmentation

implicit representati...

Sprache
Englisch
Fachbereich/-gebiet
18 Fachbereich Elektrotechnik und Informationstechnik > Self-Organizing Systems Lab
Forschungs- und xchange Profil
Interdisziplinäre Forschungsprojekte > Centre for Synthetic Biology
DDC
500 Naturwissenschaften und Mathematik > 570 Biowissenschaften, Biologie
600 Technik, Medizin, angewandte Wissenschaften > 610 Medizin, Gesundheit
600 Technik, Medizin, angewandte Wissenschaften > 621.3 Elektrotechnik, Elektronik
Institution
Universitäts- und Landesbibliothek Darmstadt
Ort
Darmstadt
Veranstaltungstitel
32nd British Machine Vision Conference
Veranstaltungsort
Virtual Conference
Startdatum der Veranstaltung
22.11.2021
Enddatum der Veranstaltung
25.11.2021
Verlag
BMVC
Publikationsjahr der Erstveröffentlichung
2021
PPN
525243836
Ergänzende Ressourcen (Supplement)
https://github.com/ChristophReich1996/OSS-Net

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