Surgical-tool detection from laparoscopic images is an important but challenging task in computer-assisted minimally invasive surgery. Illumination levels, variations in background and the different number of tools in the field of view, all pose difficulties to algorithm and model training. Yet, such challenges could be potentially tackled by exploiting the temporal information in laparoscopic videos to avoid per frame handling of the problem. In this paper, we propose a novel encoderdecoder architecture for surgical instrument detection and articulation joint detection that uses 3D convolutional layers to exploit spatio-temporal features from laparoscopic videos. When tested on benchmark and custom-built datasets, a median Dice s...
Medical instruments detection in laparoscopic video has been carried out to increase the autonomy of...
Automatically recognising surgical gestures from surgical data is an important building block of aut...
The semantic segmentation of surgical scenes is a prerequisite for task automation in robot assisted...
Surgical-tool joint detection from laparoscopic images is an important but challenging task in compu...
Semantic tool segmentation in surgical videos is important for surgical scene understanding and comp...
Adapting intelligent context-aware systems (CAS) to future operating rooms (OR) aims to improve situ...
Purpose: Real-time surgical tool tracking is a core component of the future intelligent operating ro...
Surgical tool presence detection in laparoscopic videos is a challenging problem that plays a critic...
Surgical instrument segmentation and depth estimation are crucial steps to improve autonomy in robot...
Introduction The current study presents a deep learning framework to determine, in real-time, posit...
Instrument detection, pose estimation and tracking in surgical videos is an important vision compone...
In this thesis, we address the two problem of tool detection and fine-grained activity recognition i...
Objective: The computation of anatomical information and laparoscope position is a fundamental block...
Deep learning approaches have been explored for surgical tool classification in laparoscopic videos....
Medical instruments detection in laparoscopic video has been carried out to increase the autonomy of...
Automatically recognising surgical gestures from surgical data is an important building block of aut...
The semantic segmentation of surgical scenes is a prerequisite for task automation in robot assisted...
Surgical-tool joint detection from laparoscopic images is an important but challenging task in compu...
Semantic tool segmentation in surgical videos is important for surgical scene understanding and comp...
Adapting intelligent context-aware systems (CAS) to future operating rooms (OR) aims to improve situ...
Purpose: Real-time surgical tool tracking is a core component of the future intelligent operating ro...
Surgical tool presence detection in laparoscopic videos is a challenging problem that plays a critic...
Surgical instrument segmentation and depth estimation are crucial steps to improve autonomy in robot...
Introduction The current study presents a deep learning framework to determine, in real-time, posit...
Instrument detection, pose estimation and tracking in surgical videos is an important vision compone...
In this thesis, we address the two problem of tool detection and fine-grained activity recognition i...
Objective: The computation of anatomical information and laparoscope position is a fundamental block...
Deep learning approaches have been explored for surgical tool classification in laparoscopic videos....
Medical instruments detection in laparoscopic video has been carried out to increase the autonomy of...
Automatically recognising surgical gestures from surgical data is an important building block of aut...
The semantic segmentation of surgical scenes is a prerequisite for task automation in robot assisted...