Synthetic and Real Inputs for Tool Segmentation in Robotic Surgery
Emanuele Colleoni, Philip Edwards, Danail Stoyanov
- 发表年份
- 2020
- 访问权限
- 开放获取
摘要
Semantic tool segmentation in surgical videos is important for surgical scene understanding and computer-assisted interventions as well as for the development of robotic automation. The problem is challenging because different illumination conditions, bleeding, smoke and occlusions can reduce algorithm robustness. At present labelled data for training deep learning models is still lacking for semantic surgical instrument segmentation and in this paper we show that it may be possible to use robot kinematic data coupled with laparoscopic images to alleviate the labelling problem. We propose a new deep learning based model for parallel processing of both laparoscopic and simulation images for robust segmentation of surgical tools. Due to the lack of laparoscopic frames annotated with both segmentation ground truth and kinematic information a new custom dataset was generated using the da Vinci Research Kit (dVRK) and is made available.
关键词
相关论文
机器人技术在整形外科中的应用
Vijay Kumar, Sandhya Pandey
Clinical Journal of Plastic & Reconstructive Surgery · 2026
SurfSurg6D:面向无纹理手术器械的几何一致密集对应位姿估计
Daiyun Shen, Shuojue Yang, Chang Han Low 等 7 位作者
2026
EndoGSim:基于MLLM引导的高斯泼溅的物理感知4D动态内窥镜场景模拟
Changjing Liu, Yiming Huang, Long Bai 等 5 位作者
2026
腹膜后机器人辅助肾输尿管切除术:技术描述与单中心经验
Kawashima A, Ishizuya Y, Yamamoto Y 等 12 位作者
Asian journal of endoscopic surgery · 2026