Reinforcement Learning (RL) methods have demonstrated promising results for the automation of subtasks in surgical robotic systems. Since many trial and error attempts are required to learn the optimal control policy, RL agent training can be performed in simulation and the learned behavior can be then deployed in real environments. In this work, we introduce an open-source simulation environment providing support for position based dynamics soft bodies simulation and state-of-the-art RL methods. We demonstrate the capabilities of the proposed framework by training an RL agent based on Proximal Policy Optimization in fat tissue manipulation for tumor exposure during a nephrectomy procedure. Leveraging on a preliminary optimization of the si...
Autonomy in robot-assisted surgery is essential to reduce surgeons’ cognitive load and eventually im...
The next stage for robotics development is to introduce autonomy and cooperation with human agents i...
Robots are nowadays increasingly required to deal with (partially) unknown tasks and situations. The...
Sim-to-real Deep Reinforcement Learning (DRL) has shown promising in subtasks automation for surgica...
Successful applications of Reinforcement Learning (RL) in the robotics field has proliferated after ...
PURPOSE: Automation of sub-tasks during robotic surgery is challenging due to the high variability o...
The number of robot-assisted minimally invasive surgeries is increasing every year, together with th...
An Autonomous Robotic Surgical System (ARSS) has to interact with the complex anatomical environment...
Surgical simulation is common practice in the fields of surgical education and training. Numerous su...
While the teleoperation framework has been successfully implemented for the surgical robots, especia...
In minimally invasive surgery, tools go through narrow openings and manipulate soft organs to perfor...
Human-robot shared control, which integrates the advantages of both humans and robots, is an effecti...
The complex anatomical structure of the brain and the vulnerability of its tissues make difficult to...
Within the realm of robotic control, model-free reinforcement learning is one of the most suitable a...
Objective: To advance robotic surgery simulation in gynecologic oncology by: (1) conducting a random...
Autonomy in robot-assisted surgery is essential to reduce surgeons’ cognitive load and eventually im...
The next stage for robotics development is to introduce autonomy and cooperation with human agents i...
Robots are nowadays increasingly required to deal with (partially) unknown tasks and situations. The...
Sim-to-real Deep Reinforcement Learning (DRL) has shown promising in subtasks automation for surgica...
Successful applications of Reinforcement Learning (RL) in the robotics field has proliferated after ...
PURPOSE: Automation of sub-tasks during robotic surgery is challenging due to the high variability o...
The number of robot-assisted minimally invasive surgeries is increasing every year, together with th...
An Autonomous Robotic Surgical System (ARSS) has to interact with the complex anatomical environment...
Surgical simulation is common practice in the fields of surgical education and training. Numerous su...
While the teleoperation framework has been successfully implemented for the surgical robots, especia...
In minimally invasive surgery, tools go through narrow openings and manipulate soft organs to perfor...
Human-robot shared control, which integrates the advantages of both humans and robots, is an effecti...
The complex anatomical structure of the brain and the vulnerability of its tissues make difficult to...
Within the realm of robotic control, model-free reinforcement learning is one of the most suitable a...
Objective: To advance robotic surgery simulation in gynecologic oncology by: (1) conducting a random...
Autonomy in robot-assisted surgery is essential to reduce surgeons’ cognitive load and eventually im...
The next stage for robotics development is to introduce autonomy and cooperation with human agents i...
Robots are nowadays increasingly required to deal with (partially) unknown tasks and situations. The...