Vision-based segmentation of the robotic tool during robot-assisted surgery enables downstream applications, such as augmented reality feedback, while allowing for inaccuracies in robot kinematics. With the introduction of deep learning, many methods were presented to solve instrument segmentation directly and solely from images. While these approaches made remarkable progress on benchmark datasets, fundamental challenges pertaining to their robustness remain. We present CaRTS, a causality-driven robot tool segmentation algorithm, that is designed based on a complementary causal model of the robot tool segmentation task. Rather than directly inferring segmentation masks from observed images, CaRTS iteratively aligns tool models with image o...
Robot-assisted surgery has potential advantages but lacks force feedback, which can lead to errors s...
Automating repetitive surgical subtasks such as suturing, cutting and debridement can reduce surgeon...
Scene understanding is one of the fastest growing areas in computer vision research. Such growth is ...
Semantic tool segmentation in surgical videos is important for surgical scene understanding and comp...
Real-time tool segmentation from endoscopic videos is an essential part of many computer-assisted ro...
Real-time tool segmentation from endoscopic videos is an essential part of many computer-assisted ro...
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 ...
Abundance and affordability of cameras has enabled scalable and affordable collection of image data....
Thesis (Ph.D.)--University of Washington, 2021In robot‐assisted surgery, engineering technologies ar...
In mainstream computer vision and machine learning, public datasets such as ImageNet, COCO and KITTI...
Abstract — Surgical tool tracking is an important key func-tionality for many high-level tasks in bo...
This work proves that semantic segmentation on Minimally Invasive Surgical Instruments can be improv...
In robot-aided surgery, during the execution of typical bimanual procedures such as dissection, surg...
Understanding what is happening in endoscopic scenes while it is happening is a key problem in Compu...
Robot-assisted surgery has potential advantages but lacks force feedback, which can lead to errors s...
Automating repetitive surgical subtasks such as suturing, cutting and debridement can reduce surgeon...
Scene understanding is one of the fastest growing areas in computer vision research. Such growth is ...
Semantic tool segmentation in surgical videos is important for surgical scene understanding and comp...
Real-time tool segmentation from endoscopic videos is an essential part of many computer-assisted ro...
Real-time tool segmentation from endoscopic videos is an essential part of many computer-assisted ro...
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 ...
Abundance and affordability of cameras has enabled scalable and affordable collection of image data....
Thesis (Ph.D.)--University of Washington, 2021In robot‐assisted surgery, engineering technologies ar...
In mainstream computer vision and machine learning, public datasets such as ImageNet, COCO and KITTI...
Abstract — Surgical tool tracking is an important key func-tionality for many high-level tasks in bo...
This work proves that semantic segmentation on Minimally Invasive Surgical Instruments can be improv...
In robot-aided surgery, during the execution of typical bimanual procedures such as dissection, surg...
Understanding what is happening in endoscopic scenes while it is happening is a key problem in Compu...
Robot-assisted surgery has potential advantages but lacks force feedback, which can lead to errors s...
Automating repetitive surgical subtasks such as suturing, cutting and debridement can reduce surgeon...
Scene understanding is one of the fastest growing areas in computer vision research. Such growth is ...