Stammdaten

Titel: Deep Learning for Shot Classification in Gynecologic Surgery Videos
Untertitel:
Kurzfassung:

In the last decade, advances in endoscopic surgery resulted in vast amounts of video data which is used for documentation, analysis, and education purposes. In order to find video scenes relevant for aforementioned purposes, physicians manually search and annotate hours of endoscopic surgery videos. This process is tedious and time-consuming, thus motivating the (semi-)automatic annotation of such surgery videos. In this work, we want to investigate whether the single-frame model for semantic surgery shot classification is feasible and useful in practice. We approach this problem by further training of AlexNet, an already pre-trained CNN architecture. Thus, we are able to transfer knowledge gathered from the Imagenet database to the medical use case of shot classification in endoscopic surgery videos. We annotate hours of endoscopic surgery videos for training and testing data. Our results imply that the CNN-based single-frame classification approach is able to provide useful suggestions to medical experts while annotating video scenes. Hence, the annotation process is consequently improved. Future work shall consider the evaluation of more sophisticated classification methods incorporating the temporal video dimension, which is expected to improve on the baseline evaluation done in this work.

Schlagworte:
Publikationstyp: Beitrag in Sammelwerk (Autorenschaft)
Erscheinungsdatum: 01.2017 (Online)
Erschienen in: MultiMedia Modeling 23rd International Conference, MMM 2017
MultiMedia Modeling 23rd International Conference, MMM 2017
zur Publikation
 ( Springer Verlag GmbH; )
Titel der Serie: LNCS
Bandnummer: 10132
Erstveröffentlichung: Ja
Version: -
Seite: S. 702 - 713

Versionen

Keine Version vorhanden
Erscheinungsdatum: 01.2017
ISBN (e-book):
  • 978-3-319-51810-7
  • 978-3-319-51811-4
eISSN: -
DOI: http://dx.doi.org/10.1007/978-3-319-51811-4_57
Homepage: https://link.springer.com/chapter/10.1007/978-3-319-51811-4_57
Open Access
  • Online verfügbar (nicht Open Access)

Zuordnung

Organisation Adresse
Fakultät für Technische Wissenschaften
 
Institut für Informationstechnologie
Universitaetsstr. 65-67
9020 Klagenfurt am Wörthersee
Österreich
   martina.steinbacher@aau.at
http://itec.aau.at/
zur Organisation
Universitaetsstr. 65-67
AT - 9020  Klagenfurt am Wörthersee

Kategorisierung

Sachgebiete
  • 102020 - Medizinische Informatik (305905)
Forschungscluster
  • Selbstorganisierende Systeme
Peer Reviewed
  • Ja
Publikationsfokus
  • Science to Science (Qualitätsindikator: III)
Klassifikationsraster der zugeordneten Organisationseinheiten:
Arbeitsgruppen
  • Distributed Multimedia Systems

Kooperationen

Keine Partnerorganisation ausgewählt

Beiträge der Publikation

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