Estimation of Tissue Deformation and Interactive Force in Robotic Surgery through Vision-based Learning
Srikar Annamraju, Yuxi Chen, Jooyoung Lim, Inki Kim
- 发表年份
- 2025
- 访问权限
- 开放获取
摘要
Goal: A limitation in robotic surgery is the lack of force feedback, due to challenges in suitable sensing techniques. To enhance the perception of the surgeons and precise force rendering, estimation of these forces along with tissue deformation level is presented here. Methods: An experimental test bed is built for studying the interaction, and the forces are estimated from the raw data. Since tissue deformation and stiffness are non-linearly related, they are independently computed for enhanced reliability. A Convolutional Neural Network (CNN) based vision model is deployed, and both classification and regression models are developed. Results: The forces applied on the tissue are estimated, and the tissue is classified based on its deformation. The exact deformation of the tissue is also computed. Conclusions: The surgeons can render precise forces and detect tumors using the proposed method. The rarely discussed efficacy of computing the deformation level is also demonstrated.
关键词
相关论文
Campbell-Walsh urology
Alan J. Wein editor-in-chief
2012
Principles of Robot Motion: Theory, Algorithms, and Implementations
Howie Choset, Jean‐Claude Latombe
2005
Minimally Invasive versus Abdominal Radical Hysterectomy for Cervical Cancer
Pedro T. Ramírez, Michael Frumovitz, René Pareja 等 19 位作者
2018
Guideline for Management of the Clinical T1 Renal Mass
Steven C. Campbell, Andrew C. Novick, Arie S. Belldegrun 等 12 位作者
2009