This letter proposes a hybrid control methodology to achieve full body collision avoidance in anthropomorphic robot manipulators. The proposal improves classical motion planning algorithms by introducing a Deep Reinforcement Learning (DRL) approach trained ad hoc for performing obstacle avoidance, while achieving a reaching task in the operative space. More specifically, a switching mechanism is enabled whenever a condition of proximity to the obstacles is met, thus conferring to the dual-mode architecture a self-configuring capability in order to cope with objects unexpectedly invading the workspace. The proposal has been finally tested relying on a realistic robot manipulator simulated in a V-REP environment
Path planning for robotic manipulators has proven to be a challenging issue in industrial applicatio...
Reliable indoor navigation in the presence of dynamic obstacles is an essential capability for mobil...
Deep Reinforcement Learning (DRL) has been applied successfully to many robotic applications. Howeve...
This letter proposes a hybrid control methodology to achieve full body collision avoidance in anthro...
This letter proposes a hybrid control methodology to achieve full body collision avoidance in anthro...
This work presents the experimental assessment of a hybrid control scheme based on Deep Reinforcemen...
This work presents the experimental assessment of a hybrid control scheme based on Deep Reinforcemen...
In this paper a real-time collision avoidance approach using machine learning is presented for safe ...
In this paper, the application of the policy gradient Reinforcement Learning-based (RL) method for o...
This work proposes a scenario-based Deep Reinforcement Learning (DRL) approach enabling robot manipu...
An approach to motion planning for human robot cooperation based on Deep Reinforcement Learning in s...
In this article, the trajectory planning of the two manipulators of the dual-arm robot is studied to...
Redundant manipulators are widely used in fields such as human-robot collaboration due to their good...
Path planning for robotic manipulators has proven to be a challenging issue in industrial applicatio...
Reliable indoor navigation in the presence of dynamic obstacles is an essential capability for mobil...
Deep Reinforcement Learning (DRL) has been applied successfully to many robotic applications. Howeve...
This letter proposes a hybrid control methodology to achieve full body collision avoidance in anthro...
This letter proposes a hybrid control methodology to achieve full body collision avoidance in anthro...
This work presents the experimental assessment of a hybrid control scheme based on Deep Reinforcemen...
This work presents the experimental assessment of a hybrid control scheme based on Deep Reinforcemen...
In this paper a real-time collision avoidance approach using machine learning is presented for safe ...
In this paper, the application of the policy gradient Reinforcement Learning-based (RL) method for o...
This work proposes a scenario-based Deep Reinforcement Learning (DRL) approach enabling robot manipu...
An approach to motion planning for human robot cooperation based on Deep Reinforcement Learning in s...
In this article, the trajectory planning of the two manipulators of the dual-arm robot is studied to...
Redundant manipulators are widely used in fields such as human-robot collaboration due to their good...
Path planning for robotic manipulators has proven to be a challenging issue in industrial applicatio...
Reliable indoor navigation in the presence of dynamic obstacles is an essential capability for mobil...
Deep Reinforcement Learning (DRL) has been applied successfully to many robotic applications. Howeve...