We propose Masked-Attention Transformers for Surgical Instrument Segmentation (MATIS), a two-stage, fully transformer-based method that leverages modern pixel-wise attention mechanisms for instrument segmentation. MATIS exploits the instance-level nature of the task by employing a masked attention module that generates and classifies a set of fine instrument region proposals. Our method incorporates long-term video-level information through video transformers to improve temporal consistency and enhance mask classification. We validate our approach in the two standard public benchmarks, Endovis 2017 and Endovis 2018. Our experiments demonstrate that MATIS' per-frame baseline outperforms previous state-of-the-art methods and that including ou...
Segmentation of images is a popular topic in medical AI. This is mainly due to the difficulty to obt...
This letter proposes a novel video-based, contrastive regression architecture, Contra-Sformer, for a...
Tutors: Amelia Jiménez Sánchez, Gemma Piella FenoyAlthough minimally invasive surgeries have achieve...
The ability to accurately and automatically segment surgical instruments is one of the important pre...
: Automatic surgical instrument segmentation of endoscopic images is a crucial building block of man...
Automatic surgical instrument segmentation of endoscopic images is a crucial building block of many ...
Thesis (Ph.D.)--University of Washington, 2021In robot‐assisted surgery, engineering technologies ar...
Data diversity and volume are crucial to the success of training deep learning models, while in the ...
In 2015 we began a sub-challenge at the EndoVis workshop at MICCAI in Munich using endoscope images ...
Understanding what is happening in endoscopic scenes while it is happening is a key problem in Compu...
In surgical robotics, the ability to achieve high levels of autonomy is often limited by the complex...
Abundance and affordability of cameras has enabled scalable and affordable collection of image data....
Precise instrument segmentation aids surgeons to navigate the body more easily and increases patient...
Automatically recognising surgical gestures from surgical data is an important building block of aut...
Reconstructing the 3D geometry of the surgical site and detecting instruments within it are importan...
Segmentation of images is a popular topic in medical AI. This is mainly due to the difficulty to obt...
This letter proposes a novel video-based, contrastive regression architecture, Contra-Sformer, for a...
Tutors: Amelia Jiménez Sánchez, Gemma Piella FenoyAlthough minimally invasive surgeries have achieve...
The ability to accurately and automatically segment surgical instruments is one of the important pre...
: Automatic surgical instrument segmentation of endoscopic images is a crucial building block of man...
Automatic surgical instrument segmentation of endoscopic images is a crucial building block of many ...
Thesis (Ph.D.)--University of Washington, 2021In robot‐assisted surgery, engineering technologies ar...
Data diversity and volume are crucial to the success of training deep learning models, while in the ...
In 2015 we began a sub-challenge at the EndoVis workshop at MICCAI in Munich using endoscope images ...
Understanding what is happening in endoscopic scenes while it is happening is a key problem in Compu...
In surgical robotics, the ability to achieve high levels of autonomy is often limited by the complex...
Abundance and affordability of cameras has enabled scalable and affordable collection of image data....
Precise instrument segmentation aids surgeons to navigate the body more easily and increases patient...
Automatically recognising surgical gestures from surgical data is an important building block of aut...
Reconstructing the 3D geometry of the surgical site and detecting instruments within it are importan...
Segmentation of images is a popular topic in medical AI. This is mainly due to the difficulty to obt...
This letter proposes a novel video-based, contrastive regression architecture, Contra-Sformer, for a...
Tutors: Amelia Jiménez Sánchez, Gemma Piella FenoyAlthough minimally invasive surgeries have achieve...