Modern robots are designed for assisting or replacing human beings to perform complicated planning and control operations, and the capability of autonomous navigation in a dynamic environment is an essential requirement for mobile robots. In order to alleviate the tedious task of manually programming a robot, this dissertation contributes to the design of intelligent robot control to endow mobile robots with a learning ability in autonomous navigation tasks. First, we consider the robot learning from expert demonstrations. A neural network framework is proposed as the inference mechanism to learn a policy offline from the dataset extracted from experts. Then we are interested in the robot self-learning ability without expert demonstrations....
The objective of this work is to compare the main existing techniques to synthesize perception to ac...
This work presents a Deep Reinforcement Learning algorithm to control a differentially driven mobile...
Recently, vision and learning made significant progress that could improve robot control policies fo...
Modern robots are designed for assisting or replacing human beings to perform complicated planning a...
Les robots modernes sont appelés à effectuer des opérations ou tâches complexes et la capacité de na...
Reinforcement learning is a model-free technique to solve decision-making problems by learning the b...
Online navigation with known target and unknown obstacles is an interesting problem in mobile roboti...
Autonomous navigation of robots in unknown environments from their current position to a desired tar...
In this work new artificial learning and innate control mechanisms are proposed for application in a...
In this work new artificial learning and innate control mechanisms are proposed for application in a...
In this work new artificial learning and innate control mechanisms are proposed for application in a...
The objective of this work is to compare the main existing techniques to synthesize perception to ac...
The objective of this work is to compare the main existing techniques to synthesize perception to ac...
The objective of this work is to compare the main existing techniques to synthesize perception to ac...
The objective of this work is to compare the main existing techniques to synthesize perception to ac...
The objective of this work is to compare the main existing techniques to synthesize perception to ac...
This work presents a Deep Reinforcement Learning algorithm to control a differentially driven mobile...
Recently, vision and learning made significant progress that could improve robot control policies fo...
Modern robots are designed for assisting or replacing human beings to perform complicated planning a...
Les robots modernes sont appelés à effectuer des opérations ou tâches complexes et la capacité de na...
Reinforcement learning is a model-free technique to solve decision-making problems by learning the b...
Online navigation with known target and unknown obstacles is an interesting problem in mobile roboti...
Autonomous navigation of robots in unknown environments from their current position to a desired tar...
In this work new artificial learning and innate control mechanisms are proposed for application in a...
In this work new artificial learning and innate control mechanisms are proposed for application in a...
In this work new artificial learning and innate control mechanisms are proposed for application in a...
The objective of this work is to compare the main existing techniques to synthesize perception to ac...
The objective of this work is to compare the main existing techniques to synthesize perception to ac...
The objective of this work is to compare the main existing techniques to synthesize perception to ac...
The objective of this work is to compare the main existing techniques to synthesize perception to ac...
The objective of this work is to compare the main existing techniques to synthesize perception to ac...
This work presents a Deep Reinforcement Learning algorithm to control a differentially driven mobile...
Recently, vision and learning made significant progress that could improve robot control policies fo...