This project presents the implementation of deep learning model to act as a self-driving car- agent to maximize its speed on a multilane expressway. This project includes the development of traffic environment simulation, the design of neural network model, and the implementation of reinforcement learning algorithm. The proposed model uses the minimal sensory input collected from the environment. The model was trained with reinforcement learning algorithm in the simulation environment to simulate traffic condition of seven-lane expressway. The model successfully learns and applies the optimal policy. The model was tested under three different traffic conditions to determine its performance statistically. The best model is the model with neu...
The goal of this thesis is a creation of an autonomous agent that can control a vehicle. The agent u...
This thesis is created to solve the problem in the transportation field. It is how the vehicle can m...
In the typical autonomous driving stack, planning and control systems represent two of the most cruc...
This paper explains the attempted development of a deep reinforcement learning-based self-driving ca...
In this paper, a project is described which is a 2-D modelled version of a car that will learn how t...
Deep Reinforcement Learning has led us to newer possibilities in solving complex control and navigat...
In this work, we aim to apply Artificial Intelligence techniques, based on the Machine Learning appr...
Traffic congestion diminish driving experience and increases the CO2 emissions. With the rise of 5G ...
Summarization: In this work, the problem of path planning for an autonomous vehicle that moves on a ...
With the rapid development of autonomous driving and artificial intelligence technology, end-to-end ...
Eco-approach and departure is a complex control problem wherein a driver’s actions are guided over a...
International audienceDecision making for autonomous driving in urban environments is challenging du...
Traffic flow optimization at an intersection helps to maintain a smooth urban traffic flow. It can r...
Traffic congestion causes unnecessary delay, pollution and increased fuel consumption. In this thesi...
In this thesis, we will be investigating the current landscape of state-of-the-art methods using dee...
The goal of this thesis is a creation of an autonomous agent that can control a vehicle. The agent u...
This thesis is created to solve the problem in the transportation field. It is how the vehicle can m...
In the typical autonomous driving stack, planning and control systems represent two of the most cruc...
This paper explains the attempted development of a deep reinforcement learning-based self-driving ca...
In this paper, a project is described which is a 2-D modelled version of a car that will learn how t...
Deep Reinforcement Learning has led us to newer possibilities in solving complex control and navigat...
In this work, we aim to apply Artificial Intelligence techniques, based on the Machine Learning appr...
Traffic congestion diminish driving experience and increases the CO2 emissions. With the rise of 5G ...
Summarization: In this work, the problem of path planning for an autonomous vehicle that moves on a ...
With the rapid development of autonomous driving and artificial intelligence technology, end-to-end ...
Eco-approach and departure is a complex control problem wherein a driver’s actions are guided over a...
International audienceDecision making for autonomous driving in urban environments is challenging du...
Traffic flow optimization at an intersection helps to maintain a smooth urban traffic flow. It can r...
Traffic congestion causes unnecessary delay, pollution and increased fuel consumption. In this thesi...
In this thesis, we will be investigating the current landscape of state-of-the-art methods using dee...
The goal of this thesis is a creation of an autonomous agent that can control a vehicle. The agent u...
This thesis is created to solve the problem in the transportation field. It is how the vehicle can m...
In the typical autonomous driving stack, planning and control systems represent two of the most cruc...