Programming robots for performing different activities requires calculating sequences of values of their joints by taking into account many factors, such as stability and efficiency, at the same time. Particularly for walking, state of the art techniques to approximate these sequences are based on reinforcement learning (RL). In this work we propose a multi-level system, where the same RL method is used first to learn the configuration of robot joints (poses) that allow it to stand with stability, and then in the second level, we find the sequence of poses that let it reach the furthest distance in the shortest time, while avoiding falling down and keeping a straight path. In order to evaluate this, we focus on measuring the time it takes f...
Deep reinforcement learning (DRL) offers a promising approach for the synthesis of control policies ...
In this paper the problem of free gait generation and adaptability with reinforcement learning are a...
Reinforcement learning provides a general framework for achieving autonomy and diversity in traditio...
In this paper, we proposed a novel Hybrid Reinforcement Learning framework to maintain the stability...
Development of the motion selection rule for a biped walking robot by human is difficult because it ...
Service robots have the potential to be of great value in households, health care and other labor in...
Tesis (Maestría en Ciencias de la Computación), Instituto Politécnico Nacional, CIC, 2017, 1 archivo...
Pure reinforcement learning does not scale well to domains with many degrees of freedom and particul...
Bipedal walking is a challenging task for humanoid robots. In this study, we develop a lightweight r...
Legged robots have been researched for more than half a century. However, commercially only a handfu...
We present a new reinforcement learning system more suitable to be used in robotics than existing on...
A significant goal of the yearly progression of RoboCup robotics is the improvement of bipedal locom...
Ambulation is a valuable form of locomotion for robots which must operate in spaces designed for hum...
Developing a robust, flexible, closed-loop walking algorithm for a humanoid robot is a challenging t...
In this research, an optimization methodology was introduced for improving bipedal robot locomotion ...
Deep reinforcement learning (DRL) offers a promising approach for the synthesis of control policies ...
In this paper the problem of free gait generation and adaptability with reinforcement learning are a...
Reinforcement learning provides a general framework for achieving autonomy and diversity in traditio...
In this paper, we proposed a novel Hybrid Reinforcement Learning framework to maintain the stability...
Development of the motion selection rule for a biped walking robot by human is difficult because it ...
Service robots have the potential to be of great value in households, health care and other labor in...
Tesis (Maestría en Ciencias de la Computación), Instituto Politécnico Nacional, CIC, 2017, 1 archivo...
Pure reinforcement learning does not scale well to domains with many degrees of freedom and particul...
Bipedal walking is a challenging task for humanoid robots. In this study, we develop a lightweight r...
Legged robots have been researched for more than half a century. However, commercially only a handfu...
We present a new reinforcement learning system more suitable to be used in robotics than existing on...
A significant goal of the yearly progression of RoboCup robotics is the improvement of bipedal locom...
Ambulation is a valuable form of locomotion for robots which must operate in spaces designed for hum...
Developing a robust, flexible, closed-loop walking algorithm for a humanoid robot is a challenging t...
In this research, an optimization methodology was introduced for improving bipedal robot locomotion ...
Deep reinforcement learning (DRL) offers a promising approach for the synthesis of control policies ...
In this paper the problem of free gait generation and adaptability with reinforcement learning are a...
Reinforcement learning provides a general framework for achieving autonomy and diversity in traditio...