ROOct 1, 2021

Learning from Demonstrations for Autonomous Soft-tissue Retraction

arXiv:2110.00336v152 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of reducing the number of demonstrations needed for autonomous surgical tasks, which is incremental for robot-assisted minimally invasive surgery.

The authors tackled the problem of enabling autonomous soft-tissue retraction in robot-assisted surgery by proposing a Learning from Demonstrations method based on Generative Adversarial Imitation Learning, which achieved human-like behavior and was more sample-efficient than a baseline deep reinforcement learning method.

The current research focus in Robot-Assisted Minimally Invasive Surgery (RAMIS) is directed towards increasing the level of robot autonomy, to place surgeons in a supervisory position. Although Learning from Demonstrations (LfD) approaches are among the preferred ways for an autonomous surgical system to learn expert gestures, they require a high number of demonstrations and show poor generalization to the variable conditions of the surgical environment. In this work, we propose an LfD methodology based on Generative Adversarial Imitation Learning (GAIL) that is built on a Deep Reinforcement Learning (DRL) setting. GAIL combines generative adversarial networks to learn the distribution of expert trajectories with a DRL setting to ensure generalisation of trajectories providing human-like behaviour. We consider automation of tissue retraction, a common RAMIS task that involves soft tissues manipulation to expose a region of interest. In our proposed methodology, a small set of expert trajectories can be acquired through the da Vinci Research Kit (dVRK) and used to train the proposed LfD method inside a simulated environment. Results indicate that our methodology can accomplish the tissue retraction task with human-like behaviour while being more sample-efficient than the baseline DRL method. Towards the end, we show that the learnt policies can be successfully transferred to the real robotic platform and deployed for soft tissue retraction on a synthetic phantom.

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