Situation Interpretation for Knowledge- and Model Based Laparoscopic Surgery
Abstract
To manage the influx of information into surgical practice, new man-machine interaction methods are necessary to prevent information overflow. This work presents an approach to automatically segment surgeries into phases and select the most appropriate pieces of information for the current situation. This way, assistance systems can adopt themselves to the needs of the surgeon and not the other way around.
Keywords
Maschinelles Lernen; Assistenz; Ontologie; Ontology; Surgery; Augmented Reality; Chirurgie; Erweiterte RealitätMachine Learning; AssistanceISBN
9783731505273Publisher
KIT Scientific PublishingPublisher website
http://www.ksp.kit.edu/Publication date and place
2016Classification
Computer science