Optimizing Robotic Automatic Suturing Through VR-Enhanced Data Generation for Reinforcement Learning Algorithms

Nieto N., Sánchez J.A., Aguirre M.G., Félix F., Muñoz L.A.
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Abstract

This paper explores the integration of Virtual Reality(VR) to a Surgical Robotic Simulation to enhance the quality of data used for training a ground-truth algorithm for surgical procedures performed by the DaVinci robot inside a simulated environment. As it is to be demonstrated by this paper, VR and Reinforcement Learning (RL) techniques can significantly improve the realism and effectiveness of the training data compared to traditional methods. It also investigates and deepens the study of incorporating Cognitive Vision theories to guide the learning process, following the premise that the full-immersion visual and haptic feedback models will result in better quality training data for the surgical robot to perform an autonomous surgery algorithm, leading to more accurate and adaptable minimally-invasive robotic surgery (MIRS) systems. This research was inspired and shaped by our active participation in the 2023-2024 AccelNet Surgical Robotics Challenge.
通过为强化学习算法生成虚拟现实增强数据,优化机器人自动缝合技术
本文探讨了如何将虚拟现实技术(VR)整合到外科手术机器人模拟中,以提高数据质量,用于训练达芬奇机器人在模拟环境中执行外科手术的地面实况算法。本文将证明,与传统方法相比,虚拟现实和强化学习(RL)技术能显著提高训练数据的真实性和有效性。本文还探讨并深化了结合认知视觉理论指导学习过程的研究,其前提是全沉浸式视觉和触觉反馈模型将为手术机器人执行自主手术算法提供更高质量的训练数据,从而开发出更精确、适应性更强的微创机器人手术(MIRS)系统。这项研究是在我们积极参与 2023-2024 年 AccelNet 外科机器人挑战赛的过程中得到启发和形成的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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