Autonomous vehicles or self-driving cars are prevalent nowadays, many vehicle manufacturers, and other tech companies are trying to develop autonomous vehicles. One major goal of the self-driving algorithms is to perform manoeuvres safely, even when some anomaly arises. To solve these kinds of complex issues, Artificial Intelligence and Machine Learning methods are used. One of these motion planning problems is when the tires lose their grip on the road, an autonomous vehicle should handle this situation. Thus the paper provides an Autonomous Drifting algorithm using Reinforcement Learning. The algorithm is based on a model-free learning algorithm, Twin Delayed Deep Deterministic Policy Gradients (TD3). The model is trained on six different...
In this thesis, we will be investigating the current landscape of state-of-the-art methods using dee...
Designing controllers for skid-steered wheeled robots is complex due to the interaction of the tires...
The researcher developed an autonomous driving simulation by training an end-to-end policy model usi...
Autonomous vehicles or self-driving cars are prevalent nowadays, many vehicle manufacturers, and oth...
Reinforcement Learning, as one of the main approaches of machine learning, has been gaining high pop...
Autonomous cars must be capable to operate in various conditions and learn from unforeseen scenario...
In the typical autonomous driving stack, planning and control systems represent two of the most cruc...
Autonomous vehicles mitigate road accidents and provide safe transportation with a smooth traffic fl...
Autonomous vehicle path planning aims to allow safe and rapid movement in an environment without hum...
As an indispensable branch of machine learning (ML), reinforcement learning (RL) plays a prominent r...
In this work, we combine Curriculum Learning with Deep Reinforcement Learning to learn without any p...
There exist several approaches to robot locomotion, ranging from more traditional hand-designed traj...
In this paper, a project is described which is a 2-D modelled version of a car that will learn how t...
In this project, we implement and deploy reinforcement learning (RL) algorithms for path planning, d...
With the rapid development of autonomous driving and artificial intelligence technology, end-to-end ...
In this thesis, we will be investigating the current landscape of state-of-the-art methods using dee...
Designing controllers for skid-steered wheeled robots is complex due to the interaction of the tires...
The researcher developed an autonomous driving simulation by training an end-to-end policy model usi...
Autonomous vehicles or self-driving cars are prevalent nowadays, many vehicle manufacturers, and oth...
Reinforcement Learning, as one of the main approaches of machine learning, has been gaining high pop...
Autonomous cars must be capable to operate in various conditions and learn from unforeseen scenario...
In the typical autonomous driving stack, planning and control systems represent two of the most cruc...
Autonomous vehicles mitigate road accidents and provide safe transportation with a smooth traffic fl...
Autonomous vehicle path planning aims to allow safe and rapid movement in an environment without hum...
As an indispensable branch of machine learning (ML), reinforcement learning (RL) plays a prominent r...
In this work, we combine Curriculum Learning with Deep Reinforcement Learning to learn without any p...
There exist several approaches to robot locomotion, ranging from more traditional hand-designed traj...
In this paper, a project is described which is a 2-D modelled version of a car that will learn how t...
In this project, we implement and deploy reinforcement learning (RL) algorithms for path planning, d...
With the rapid development of autonomous driving and artificial intelligence technology, end-to-end ...
In this thesis, we will be investigating the current landscape of state-of-the-art methods using dee...
Designing controllers for skid-steered wheeled robots is complex due to the interaction of the tires...
The researcher developed an autonomous driving simulation by training an end-to-end policy model usi...