Automatic surgical instrument segmentation of endoscopic images is a crucial building block of many computer-assistance applications for minimally invasive surgery. So far, state-of-the-art approaches completely rely on the availability of a ground-truth supervision signal, obtained via manual annotation, thus expensive to collect at large scale. In this paper, we present FUN-SIS, a Fully-UNsupervised approach for binary Surgical Instrument Segmentation. FUN-SIS trains a per-frame segmentation model on completely unlabelled endoscopic videos, by solely relying on implicit motion information and instrument shape-priors. We define shape-priors as realistic segmentation masks of the instruments, not necessarily coming from the same dataset/dom...
Computer vision based models, such as object segmentation, detection and tracking, have the potentia...
Real-time tool segmentation from endoscopic videos is an essential part of many computer-assisted ro...
Abundance and affordability of cameras has enabled scalable and affordable collection of image data....
Automatic surgical instrument segmentation of endoscopic images is a crucial building block of many ...
: Automatic surgical instrument segmentation of endoscopic images is a crucial building block of man...
Understanding what is happening in endoscopic scenes while it is happening is a key problem in Compu...
Data diversity and volume are crucial to the success of training deep learning models, while in the ...
Surgical tool segmentation in endoscopic videos is an important component of computer assisted int...
Thesis (Ph.D.)--University of Washington, 2021In robot‐assisted surgery, engineering technologies ar...
In 2015 we began a sub-challenge at the EndoVis workshop at MICCAI in Munich using endoscope images ...
Intraoperative tracking of laparoscopic instruments is often a prerequisite for computer and robotic...
Instance segmentation of surgical instruments is a long-standing research problem, crucial for the d...
Precise instrument segmentation aids surgeons to navigate the body more easily and increases patient...
We propose Masked-Attention Transformers for Surgical Instrument Segmentation (MATIS), a two-stage, ...
Real-time tool segmentation from endoscopic videos is an essential part of many computer-assisted ro...
Computer vision based models, such as object segmentation, detection and tracking, have the potentia...
Real-time tool segmentation from endoscopic videos is an essential part of many computer-assisted ro...
Abundance and affordability of cameras has enabled scalable and affordable collection of image data....
Automatic surgical instrument segmentation of endoscopic images is a crucial building block of many ...
: Automatic surgical instrument segmentation of endoscopic images is a crucial building block of man...
Understanding what is happening in endoscopic scenes while it is happening is a key problem in Compu...
Data diversity and volume are crucial to the success of training deep learning models, while in the ...
Surgical tool segmentation in endoscopic videos is an important component of computer assisted int...
Thesis (Ph.D.)--University of Washington, 2021In robot‐assisted surgery, engineering technologies ar...
In 2015 we began a sub-challenge at the EndoVis workshop at MICCAI in Munich using endoscope images ...
Intraoperative tracking of laparoscopic instruments is often a prerequisite for computer and robotic...
Instance segmentation of surgical instruments is a long-standing research problem, crucial for the d...
Precise instrument segmentation aids surgeons to navigate the body more easily and increases patient...
We propose Masked-Attention Transformers for Surgical Instrument Segmentation (MATIS), a two-stage, ...
Real-time tool segmentation from endoscopic videos is an essential part of many computer-assisted ro...
Computer vision based models, such as object segmentation, detection and tracking, have the potentia...
Real-time tool segmentation from endoscopic videos is an essential part of many computer-assisted ro...
Abundance and affordability of cameras has enabled scalable and affordable collection of image data....