Real-time tool segmentation from endoscopic videos is an essential part of many computer-assisted robotic surgical systems and of critical importance in robotic surgical data science. We propose two novel deep learning architectures for automatic segmentation of non-rigid surgical instruments. Both methods take advantage of automated deep-learning based multi-scale feature extraction while trying to maintain an accurate segmentation quality at all resolutions. The two proposed methods encode the multi-scale constraint inside the network architecture. The first proposed architecture enforces it by cascaded aggregation of predictions and the second proposed network does it by means of a holistically-nested architecture where the loss at each ...
In surgical robotics, the ability to achieve high levels of autonomy is often limited by the complex...
Semantic segmentation of organs and tissue types is an important sub-problem in image based scene un...
Abstract The prediction of anatomical structures within the surgical field by artificial intelligenc...
Real-time tool segmentation from endoscopic videos is an essential part of many computer-assisted ro...
Understanding what is happening in endoscopic scenes while it is happening is a key problem in Compu...
Real-time tool segmentation is an essential component in computer-assisted surgical systems. We prop...
The ability to accurately and automatically segment surgical instruments is one of the important pre...
This work proves that semantic segmentation on Minimally Invasive Surgical Instruments can be improv...
Semantic tool segmentation in surgical videos is important for surgical scene understanding and comp...
Data diversity and volume are crucial to the success of training deep learning models, while in the ...
Thesis (Ph.D.)--University of Washington, 2021In robot‐assisted surgery, engineering technologies ar...
Surgical robot technology has revolutionized surgery toward a safer laparoscopic surgery and ideally...
In 2015 we began a sub-challenge at the EndoVis workshop at MICCAI in Munich using endoscope images ...
Abstract Tracking the instruments in a surgical scene is an essential task in minimally invasive sur...
In recent years, deep learning methods have become the most effective approach for tool segmentation...
In surgical robotics, the ability to achieve high levels of autonomy is often limited by the complex...
Semantic segmentation of organs and tissue types is an important sub-problem in image based scene un...
Abstract The prediction of anatomical structures within the surgical field by artificial intelligenc...
Real-time tool segmentation from endoscopic videos is an essential part of many computer-assisted ro...
Understanding what is happening in endoscopic scenes while it is happening is a key problem in Compu...
Real-time tool segmentation is an essential component in computer-assisted surgical systems. We prop...
The ability to accurately and automatically segment surgical instruments is one of the important pre...
This work proves that semantic segmentation on Minimally Invasive Surgical Instruments can be improv...
Semantic tool segmentation in surgical videos is important for surgical scene understanding and comp...
Data diversity and volume are crucial to the success of training deep learning models, while in the ...
Thesis (Ph.D.)--University of Washington, 2021In robot‐assisted surgery, engineering technologies ar...
Surgical robot technology has revolutionized surgery toward a safer laparoscopic surgery and ideally...
In 2015 we began a sub-challenge at the EndoVis workshop at MICCAI in Munich using endoscope images ...
Abstract Tracking the instruments in a surgical scene is an essential task in minimally invasive sur...
In recent years, deep learning methods have become the most effective approach for tool segmentation...
In surgical robotics, the ability to achieve high levels of autonomy is often limited by the complex...
Semantic segmentation of organs and tissue types is an important sub-problem in image based scene un...
Abstract The prediction of anatomical structures within the surgical field by artificial intelligenc...