For a robot, the ability to get from one place to another is one of the most basic skills. However, locomotion on legged robots is a challenging multidimensional control problem. This paper presents a machine learning approach to legged locomotion, with all training done on the physical robots. The main contributions are a specification of our fully automated learning environment and a detailed empirical comparison of four different machine learning algorithms for learning quadrupedal locomotion. The resulting learned walk is considerably faster than all previously reported hand-coded walks for the same robot platform
The Ph.D. thesis is focused on using the reinforcement learning for four legged robot control. The m...
The Ph.D. thesis is focused on using the reinforcement learning for four legged robot control. The m...
Learning new gaits for compliant robots is a challenging multi-dimensional optimization task. Furthe...
For a robot, the ability to get from one place to another is one of the most basic skills. However, ...
To generate stable walking of a quadruped, the complexity of the configuration of the robot involves...
The ability to form support contacts at discontinuous locations makes legged robots suitable for loc...
Building controllers for legged robots with agility and intelligence has been one of the typical cha...
Building controllers for legged robots with agility and intelligence has been one of the typical cha...
Abstract Legged robots offer the potential to navigate a wide variety of terrains that are inaccessi...
Robots hold the promise of becoming useful helpers for many dangerous, laborious, or unpleasant task...
Creating gaits for legged robots is an important task to en-able robots to access rugged terrain, ye...
This paper presents an efficient technique for a self-learning dynamic walk for a quadrupedal robot....
Ambulation is a valuable form of locomotion for robots which must operate in spaces designed for hum...
Significant goal in walking robot design is realization of autonomous system which is capable of mot...
Deep reinforcement learning (DRL) offers a promising approach for the synthesis of control policies ...
The Ph.D. thesis is focused on using the reinforcement learning for four legged robot control. The m...
The Ph.D. thesis is focused on using the reinforcement learning for four legged robot control. The m...
Learning new gaits for compliant robots is a challenging multi-dimensional optimization task. Furthe...
For a robot, the ability to get from one place to another is one of the most basic skills. However, ...
To generate stable walking of a quadruped, the complexity of the configuration of the robot involves...
The ability to form support contacts at discontinuous locations makes legged robots suitable for loc...
Building controllers for legged robots with agility and intelligence has been one of the typical cha...
Building controllers for legged robots with agility and intelligence has been one of the typical cha...
Abstract Legged robots offer the potential to navigate a wide variety of terrains that are inaccessi...
Robots hold the promise of becoming useful helpers for many dangerous, laborious, or unpleasant task...
Creating gaits for legged robots is an important task to en-able robots to access rugged terrain, ye...
This paper presents an efficient technique for a self-learning dynamic walk for a quadrupedal robot....
Ambulation is a valuable form of locomotion for robots which must operate in spaces designed for hum...
Significant goal in walking robot design is realization of autonomous system which is capable of mot...
Deep reinforcement learning (DRL) offers a promising approach for the synthesis of control policies ...
The Ph.D. thesis is focused on using the reinforcement learning for four legged robot control. The m...
The Ph.D. thesis is focused on using the reinforcement learning for four legged robot control. The m...
Learning new gaits for compliant robots is a challenging multi-dimensional optimization task. Furthe...