Optimal control for multicopters is difficult in part due to the low processing power available, and the instability inherent to multicopters. Deep imitation learning is a method for approximating an expert control policy with a neural network, and has the potential of improving control for multicopters. We investigate the performance and reliability of deep imitation learning with trajectory optimization as the expert policy by first defining a dynamics model for multicopters and applying a trajectory optimization algorithm to it. Our investigation shows that network architecture plays an important role in the characteristics of both the learning process and the resulting control policy, and that in particular trajectory optimization can b...
Advances in robotics have resulted in increases both in the availability of robots and also their co...
In industrial environments robots are used for various tasks. At this moment it is not feasible for ...
The past five years have seen rapid proliferation of work on deep learning: learning algorithms that...
Optimal control for multicopters is difficult in part due to the low processing power available, and...
The purpose of this thesis was to compare the performance of three different imitation learning algo...
Creating realistic models of human fighter pilot behavior is made possible with recent deep learning...
Many existing imitation learning datasets are collected from multiple demonstrators, each with diffe...
Klassiske kontrollmetoder avhenger av nøyaktige modeller. Slike modeller eksisterer ikke alltid for ...
Machine learning regression techniques have shown success at feedback control to perform near-optima...
Imitation learning has gained huge popularity due to its promises in different fields such as roboti...
International audienceWhen cast into the Deep Reinforcement Learning framework, many robotics tasks ...
The way characters move and behave in computer and video games are important factors in their believ...
In this paper we explore few-shot imitation learning for control problems, which involves learning t...
End-to-end autonomous driving can be approached by finding a policy function that maps observation (...
Imitation learning algorithms have been interpreted as variants of divergence minimization problems....
Advances in robotics have resulted in increases both in the availability of robots and also their co...
In industrial environments robots are used for various tasks. At this moment it is not feasible for ...
The past five years have seen rapid proliferation of work on deep learning: learning algorithms that...
Optimal control for multicopters is difficult in part due to the low processing power available, and...
The purpose of this thesis was to compare the performance of three different imitation learning algo...
Creating realistic models of human fighter pilot behavior is made possible with recent deep learning...
Many existing imitation learning datasets are collected from multiple demonstrators, each with diffe...
Klassiske kontrollmetoder avhenger av nøyaktige modeller. Slike modeller eksisterer ikke alltid for ...
Machine learning regression techniques have shown success at feedback control to perform near-optima...
Imitation learning has gained huge popularity due to its promises in different fields such as roboti...
International audienceWhen cast into the Deep Reinforcement Learning framework, many robotics tasks ...
The way characters move and behave in computer and video games are important factors in their believ...
In this paper we explore few-shot imitation learning for control problems, which involves learning t...
End-to-end autonomous driving can be approached by finding a policy function that maps observation (...
Imitation learning algorithms have been interpreted as variants of divergence minimization problems....
Advances in robotics have resulted in increases both in the availability of robots and also their co...
In industrial environments robots are used for various tasks. At this moment it is not feasible for ...
The past five years have seen rapid proliferation of work on deep learning: learning algorithms that...