DeepPhase: Surgical Phase Recognition in CATARACTS Videos (1807.10565v1)
Abstract: Automated surgical workflow analysis and understanding can assist surgeons to standardize procedures and enhance post-surgical assessment and indexing, as well as, interventional monitoring. Computer-assisted interventional (CAI) systems based on video can perform workflow estimation through surgical instruments' recognition while linking them to an ontology of procedural phases. In this work, we adopt a deep learning paradigm to detect surgical instruments in cataract surgery videos which in turn feed a surgical phase inference recurrent network that encodes temporal aspects of phase steps within the phase classification. Our models present comparable to state-of-the-art results for surgical tool detection and phase recognition with accuracies of 99 and 78% respectively.
- Odysseas Zisimopoulos (4 papers)
- Evangello Flouty (5 papers)
- Imanol Luengo (10 papers)
- Petros Giataganas (5 papers)
- Jean Nehme (4 papers)
- Andre Chow (2 papers)
- Danail Stoyanov (122 papers)