This study explores the application of multi-agent reinforcement learning (MARL) to enhance the decision-making, safety, and passenger comfort of Autonomous Vehicles (AVs)at uncontrolled intersections. The research aims to assess the potential of MARL in modeling multiple agents interacting within a shared environment, reflecting real-world situations where AVs interact with multiple actors. The findings suggest that AVs trained using aMARL approach with global experiences can better navigate intersection scenarios than AVs trained on local (individual) experiences. This capability is a critical precursor to achieving Level 5 autonomy, where vehicles are expected to manage all aspects of the driving task under all conditions. The research c...
Autonomous driving is expected to become more common in the future. Autonomous vehicles operate toda...
In this thesis, we will be investigating the current landscape of state-of-the-art methods using dee...
Automated driving has been pursued for more than fifty years, but with the widespread adoption of ma...
This study explores the application of multi-agent reinforcement learning (MARL) to enhance the deci...
This study explores the application of multi-agent reinforcement learning (MARL) to enhance the deci...
Self-driving cars have become a popular research topic in recent years. Autonomous driving is a comp...
Building autonomous vehicles (AVs) is a complex problem, but enabling them to operate in the real wo...
Recent advances in Deep Reinforcement Learning have sparked new interest in many different research ...
Autonomous systems such as Connected Autonomous Vehicles (CAVs), assistive robots are set improve th...
Autonomous systems such as Connected Autonomous Vehicles (CAVs), assistive robots are set improve th...
Autonomous systems such as Connected Autonomous Vehicles (CAVs), assistive robots are set improve th...
2000-2011 IEEE. Autonomous driving is one of the most important AI applications and has attracted ex...
Autonomous driving is an active field of research in academia and industry. On the way to the ambiti...
Over the last two decades, autonomous driving has progressed from science fiction to a real possibil...
Following man-made rules in the traditional control method of autonomous driving causes limitations ...
Autonomous driving is expected to become more common in the future. Autonomous vehicles operate toda...
In this thesis, we will be investigating the current landscape of state-of-the-art methods using dee...
Automated driving has been pursued for more than fifty years, but with the widespread adoption of ma...
This study explores the application of multi-agent reinforcement learning (MARL) to enhance the deci...
This study explores the application of multi-agent reinforcement learning (MARL) to enhance the deci...
Self-driving cars have become a popular research topic in recent years. Autonomous driving is a comp...
Building autonomous vehicles (AVs) is a complex problem, but enabling them to operate in the real wo...
Recent advances in Deep Reinforcement Learning have sparked new interest in many different research ...
Autonomous systems such as Connected Autonomous Vehicles (CAVs), assistive robots are set improve th...
Autonomous systems such as Connected Autonomous Vehicles (CAVs), assistive robots are set improve th...
Autonomous systems such as Connected Autonomous Vehicles (CAVs), assistive robots are set improve th...
2000-2011 IEEE. Autonomous driving is one of the most important AI applications and has attracted ex...
Autonomous driving is an active field of research in academia and industry. On the way to the ambiti...
Over the last two decades, autonomous driving has progressed from science fiction to a real possibil...
Following man-made rules in the traditional control method of autonomous driving causes limitations ...
Autonomous driving is expected to become more common in the future. Autonomous vehicles operate toda...
In this thesis, we will be investigating the current landscape of state-of-the-art methods using dee...
Automated driving has been pursued for more than fifty years, but with the widespread adoption of ma...