Fulfilling the ISO/TS 15066 regulation is crucial for implementing a certifiable human-robot collaborative application. If not properly embedded in the definition of the control action for the robot, the application of ISO/TS 15066 requirements can lead to a conservative and inefficient behavior of the robot. In order to maximize the performance, in this paper we propose an approach based on Deep Reinforcement Learning (DRL) for integrating the safety standards in a collaborative application. The proposed strategy is experimentally validated
Recent successes combine reinforcement learning algorithms and deep neural networks, despite reinfor...
Reinforcement learning is a process of investigating the interaction between agents and the environm...
As the capabilities of robotic systems increase, we move closer to the vision of ubiquitous robotic ...
Fulfilling the ISO/TS 15066 regulation is crucial for implementing a certifiable human-robot collabo...
Aiming at human-robot collaboration in manufacturing, the operators safety is the primary issue duri...
We present a robotic setup for real-world testing and evaluation of human-robot and human-human coll...
Deep reinforcement learning (RL) has shown promising results in the motion planning of manipulators....
The introduction of collaborative robots in industrial environments reinforces the need to provide t...
In this paper a real-time collision avoidance approach using machine learning is presented for safe ...
Despite the successes of deep reinforcement learning (RL), it is still challenging to obtain safe po...
Deployment of Reinforcement Learning (RL) algorithms for robotics applications in the real world req...
Shared expectations and mutual understanding are critical facets of teamwork. Achieving these in hum...
Robots are expected to become an increasingly common part of most humans everyday lives. As the numb...
In an increasing demand for human-robot collaboration systems, the need for safe robots is crucial. ...
An approach to motion planning for human robot cooperation based on Deep Reinforcement Learning in s...
Recent successes combine reinforcement learning algorithms and deep neural networks, despite reinfor...
Reinforcement learning is a process of investigating the interaction between agents and the environm...
As the capabilities of robotic systems increase, we move closer to the vision of ubiquitous robotic ...
Fulfilling the ISO/TS 15066 regulation is crucial for implementing a certifiable human-robot collabo...
Aiming at human-robot collaboration in manufacturing, the operators safety is the primary issue duri...
We present a robotic setup for real-world testing and evaluation of human-robot and human-human coll...
Deep reinforcement learning (RL) has shown promising results in the motion planning of manipulators....
The introduction of collaborative robots in industrial environments reinforces the need to provide t...
In this paper a real-time collision avoidance approach using machine learning is presented for safe ...
Despite the successes of deep reinforcement learning (RL), it is still challenging to obtain safe po...
Deployment of Reinforcement Learning (RL) algorithms for robotics applications in the real world req...
Shared expectations and mutual understanding are critical facets of teamwork. Achieving these in hum...
Robots are expected to become an increasingly common part of most humans everyday lives. As the numb...
In an increasing demand for human-robot collaboration systems, the need for safe robots is crucial. ...
An approach to motion planning for human robot cooperation based on Deep Reinforcement Learning in s...
Recent successes combine reinforcement learning algorithms and deep neural networks, despite reinfor...
Reinforcement learning is a process of investigating the interaction between agents and the environm...
As the capabilities of robotic systems increase, we move closer to the vision of ubiquitous robotic ...