Automatic recognition of surgical phases is an important component for developing an intra-operative context-aware system. Prior work in this area focuses on recognizing short-term tool usage patterns within surgical phases. However, the difference between intra- and interphase tool usage patterns has not been investigated for automatic phase recognition. We developed a Recurrent Neural Network (RNN), in particular a state-preserving Long Short Term Memory (LSTM) architecture to utilize the long-term evolution of tool usage within complete surgical procedures. For fully automatic tool presence detection from surgical video frames, a Convolutional Neural Network (CNN) based architecture namely ZIBNet is employed. Our ...
Background: Operating room planning is a complex task as pre-operative estimations of procedure dura...
In recent times, many studies concerning surgical video analysis are being conducted due to its grow...
Computer-assisted interventions (CAI) aim to increase the effectiveness, precision and repeatability...
Automatic recognition of surgical phases is an important component for developing an intra-operative...
Online recognition of surgical phases is essential to develop systems able to effectively conceive t...
Adapting intelligent context-aware systems (CAS) to future operating rooms (OR) aims to improve situ...
Surgical phase recognition is an important aspect of surgical workflow analysis, as it allows an aut...
Surgical tool presence detection in laparoscopic videos is a challenging problem that plays a critic...
International audienceThis paper investigates the automatic monitoring of tool usage during a surger...
Deep learning is a recent technology that has shown excellent capabilities for recognition and ident...
substantial work has been directed towards sensor-based de-tection and recognition of human activity...
PURPOSE: We tackle the problem of online surgical phase recognition in laparoscopic procedures, whic...
13 páginas; 4 figuras; 5 tablasDeep learning is a recent technology that has shown excellent capabil...
Surgical workflow analysis in laparoscopic surgeries has been studied widely during last years becau...
Purpose: Real-time surgical tool tracking is a core component of the future intelligent operating ro...
Background: Operating room planning is a complex task as pre-operative estimations of procedure dura...
In recent times, many studies concerning surgical video analysis are being conducted due to its grow...
Computer-assisted interventions (CAI) aim to increase the effectiveness, precision and repeatability...
Automatic recognition of surgical phases is an important component for developing an intra-operative...
Online recognition of surgical phases is essential to develop systems able to effectively conceive t...
Adapting intelligent context-aware systems (CAS) to future operating rooms (OR) aims to improve situ...
Surgical phase recognition is an important aspect of surgical workflow analysis, as it allows an aut...
Surgical tool presence detection in laparoscopic videos is a challenging problem that plays a critic...
International audienceThis paper investigates the automatic monitoring of tool usage during a surger...
Deep learning is a recent technology that has shown excellent capabilities for recognition and ident...
substantial work has been directed towards sensor-based de-tection and recognition of human activity...
PURPOSE: We tackle the problem of online surgical phase recognition in laparoscopic procedures, whic...
13 páginas; 4 figuras; 5 tablasDeep learning is a recent technology that has shown excellent capabil...
Surgical workflow analysis in laparoscopic surgeries has been studied widely during last years becau...
Purpose: Real-time surgical tool tracking is a core component of the future intelligent operating ro...
Background: Operating room planning is a complex task as pre-operative estimations of procedure dura...
In recent times, many studies concerning surgical video analysis are being conducted due to its grow...
Computer-assisted interventions (CAI) aim to increase the effectiveness, precision and repeatability...