This paper presents and experimentally validates a concept of end-to-end imitation learning for autonomous systems by using a composite architecture of convolutional neural network (ConvNet) and Long Short Term Memory (LSTM) neural network. In particular, a spatio-temporal deep neural network is developed, which learns to imitate the policy used by a human supervisor to drive a car-like robot in a maze environment. The spatial and temporal components of the imitation model are learned by using deep convolutional network and recurrent neural network architectures, respectively. The imitation model learns the policy of a human supervisor as a function of laser light detection and ranging (LIDAR) data, which is then used in real time to drive ...
Autonomous mobile robots must accomplish tasks in unknown and noisy environments. In this context, l...
Imitation learning has gained huge popularity due to its promises in different fields such as roboti...
Deep learning techniques have shown success in learning from raw high dimensional data in various a...
Autonomous vehicles are no longer a thing of the future. The technology is here and getting better e...
This paper proposes an off-policy imitation learning methodology for autonomous driving using a doub...
abstract: Recent advancements in external memory based neural networks have shown promise in solvin...
We propose an imitative learning model that allows a robot to acquire positional relations between t...
Artificial intelligence and machine learning are used to solve more and more different and complex p...
In order to enable more widespread application of robots, we are required to reduce the human effort...
This paper addresses the problems related to the mapless navigation control of wheeled mobile robots...
Advances in robotics have resulted in increases both in the availability of robots and also their co...
This project presents the design of a robot which can both imitate movement and learn them through a...
We present a model, composed of hierarchy of articial neural networks, for robot learning by demonst...
In this work we propose a hierarchical architecture which constructs internal models of a robot envi...
End-to-End learning models trained with conditional imitation learning (CIL) have demonstrated their...
Autonomous mobile robots must accomplish tasks in unknown and noisy environments. In this context, l...
Imitation learning has gained huge popularity due to its promises in different fields such as roboti...
Deep learning techniques have shown success in learning from raw high dimensional data in various a...
Autonomous vehicles are no longer a thing of the future. The technology is here and getting better e...
This paper proposes an off-policy imitation learning methodology for autonomous driving using a doub...
abstract: Recent advancements in external memory based neural networks have shown promise in solvin...
We propose an imitative learning model that allows a robot to acquire positional relations between t...
Artificial intelligence and machine learning are used to solve more and more different and complex p...
In order to enable more widespread application of robots, we are required to reduce the human effort...
This paper addresses the problems related to the mapless navigation control of wheeled mobile robots...
Advances in robotics have resulted in increases both in the availability of robots and also their co...
This project presents the design of a robot which can both imitate movement and learn them through a...
We present a model, composed of hierarchy of articial neural networks, for robot learning by demonst...
In this work we propose a hierarchical architecture which constructs internal models of a robot envi...
End-to-End learning models trained with conditional imitation learning (CIL) have demonstrated their...
Autonomous mobile robots must accomplish tasks in unknown and noisy environments. In this context, l...
Imitation learning has gained huge popularity due to its promises in different fields such as roboti...
Deep learning techniques have shown success in learning from raw high dimensional data in various a...