Stammdaten

Titel: Event Recognition in Laparoscopic Gynecology Videos with Hybrid Transformers
Untertitel:
Kurzfassung:

Analyzing laparoscopic surgery videos presents a complex and multifaceted challenge, with applications including surgical training, intra-operative surgical complication prediction, and post-operative surgical assessment. Identifying crucial events within these videos is a significant prerequisite in a majority of these applications. In this paper, we introduce a comprehensive dataset tailored for relevant event recognition in laparoscopic gynecology videos. Our dataset includes annotations for critical events associated with major intra-operative challenges and post-operative complications. To validate the precision of our annotations, we assess event recognition performance using several CNN-RNN architectures. Furthermore, we introduce and evaluate a hybrid transformer architecture coupled with a customized training-inference framework to recognize four specific events in laparoscopic surgery videos. Leveraging the Transformer networks, our proposed architecture harnesses inter-frame dependencies to counteract the adverse effects of relevant content occlusion, motion blur, and surgical scene variation, thus significantly enhancing event recognition accuracy. Moreover, we present a frame sampling strategy designed to manage variations in surgical scenes and the surgeons’ skill level, resulting in event recognition with high temporal resolution. We empirically demonstrate the superiority of our proposed methodology in event recognition compared to conventional CNN-RNN architectures through a series of extensive experiments.

Schlagworte: Medical Video Analysis, Laparoscopic Gynecology, Transformers
Publikationstyp: Beitrag in Sammelwerk (Autorenschaft)
Erscheinungsdatum: 2024 (Print)
Erschienen in: MultiMedia Modeling
MultiMedia Modeling
zur Publikation
 ( Springer Verlag GmbH; )
Titel der Serie: Lecture Notes in Computer Science (LNCS)
Bandnummer: 14565
Erstveröffentlichung: Ja
Version: -
Seite: S. 82 - 95

Versionen

Keine Version vorhanden
Erscheinungsdatum: 2024
ISBN:
  • 9783031564345
ISSN: 0302-9743
Homepage: https://link.springer.com/chapter/10.1007/978-3-031-56435-2_7
Erscheinungsdatum: 20.03.2024
ISBN (e-book):
  • 9783031564352
eISSN: 1611-3349
DOI: http://dx.doi.org/10.1007/978-3-031-56435-2_7
Homepage: https://link.springer.com/chapter/10.1007/978-3-031-56435-2_7
Open Access
  • Online verfügbar (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
  • 1020 - Informatik
Forschungscluster Kein Forschungscluster ausgewählt
Peer Reviewed
  • Ja
Publikationsfokus
  • Science to Science (Qualitätsindikator: II)
Klassifikationsraster der zugeordneten Organisationseinheiten:
Arbeitsgruppen
  • Verteilte Systeme

Kooperationen

Organisation Adresse
Unversity of Bern / Center for AI in Medicine
Hochschulstrasse 4
3012 Bern
Schweiz
Hochschulstrasse 4
CH - 3012  Bern
Medical University Vienna / Department of Gynecology and Gynecological Oncology
Spitalgasse 23
1090 Wien
Österreich - Wien
Spitalgasse 23
AT - 1090  Wien

Beiträge der Publikation

Keine verknüpften Publikationen vorhanden