Towards Safe and Efficient Reinforcement Learning for Surgical Robots Using Real-Time Human Supervision and Demonstration

Yafei Ou, M. Tavakoli
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引用次数: 2

Abstract

Recent research in surgical robotics has focused on increasing the level of autonomy in order to reduce the workload of surgeons. While deep reinforcement learning (DRL) has shown promising results in automating some surgical subtasks, due to its demand for a large number of random explorations, safety and learning efficiency remain the primary challenges when applying it to surgical robot learning. In this work, we present a DRL framework with real-time human supervision during the training process for surgical robot learning to avoid significant failures and speed up training. A novel training methodology based on the combination of DRL and generative adversarial imitation learning (GAIL) is proposed to further improve learning efficiency by imitating human behaviors. The proposed method is validated using two simulated environments, where human intervention is performed via teleoperation. Results show that our method outperforms baseline algorithms and can achieve safe and efficient learning.
利用实时人类监督和演示实现手术机器人安全高效的强化学习
外科机器人的最新研究集中在提高自主水平,以减少外科医生的工作量。虽然深度强化学习(DRL)在一些手术子任务的自动化方面显示出了很好的结果,但由于它需要大量的随机探索,将其应用于手术机器人学习时,安全性和学习效率仍然是主要的挑战。在这项工作中,我们提出了一个在训练过程中具有实时人工监督的DRL框架,用于手术机器人学习,以避免重大故障并加快训练速度。提出了一种基于DRL和生成对抗模仿学习(GAIL)相结合的训练方法,通过模仿人类行为进一步提高学习效率。在两个模拟环境中,通过远程操作进行人为干预,验证了所提出的方法。结果表明,该方法优于基准算法,可以实现安全高效的学习。
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