Abstract: Autonomous shipping has recently gained much interest in the research community. However, little research focuses on inland - and port navigation, even though this is identified by countries such as Belgium and the Netherlands as an essential step towards a sustainable future. These environments pose unique challenges, since they can contain dynamic obstacles that do not broadcast their location, such as small vessels, kayaks or buoys. Therefore, this research proposes a navigational algorithm which can navigate an inland vessel in a wide variety of complex port scenarios using ranging sensors to observe the environment. The proposed methodology is based on a machine learning approach that has recently set benchmark results in var...
In this article, we propose a trajectory planning algorithm that enables autonomous surface vessels ...
International audienceThe automatic detection of vessel behaviours from Automatic Identification Sys...
This thesis has provided insight into how machine learning can be beneficial to path planning in con...
Autonomous shipping is a heavily researched topic, and currently, there are large amounts of ship tr...
This paper presents the idea of using machine learning techniques to simulate and demonstrate learni...
In this article we present the state of the art in the field of autonomous surface ship navigation u...
This paper explores the use of machine learning and deep learning artificial intelligence (AI) techn...
Autonomous navigation is achieved by training or programming the ship with the stored data about the...
The problem of following, or tracking a predefined path, has been a long standing problem in the con...
The advent of artificial intelligence and deep learning has provided sophisticated functionality for...
Path following is one of the indispensable tools for autonomous ships, which ensures that autonomous...
This thesis is part of the SenSailor Project of the Facultat de Nàutica de Barcelona in which an unm...
Autonomous systems are becoming ubiquitous and gaining momentum within the marine sector. Since the ...
Autonomy is being developed further and further in the maritime navigation area. The wish to create ...
18th International Conference on Automation Science and Engineering (CASE), 20-24 August 2022.-- 8 p...
In this article, we propose a trajectory planning algorithm that enables autonomous surface vessels ...
International audienceThe automatic detection of vessel behaviours from Automatic Identification Sys...
This thesis has provided insight into how machine learning can be beneficial to path planning in con...
Autonomous shipping is a heavily researched topic, and currently, there are large amounts of ship tr...
This paper presents the idea of using machine learning techniques to simulate and demonstrate learni...
In this article we present the state of the art in the field of autonomous surface ship navigation u...
This paper explores the use of machine learning and deep learning artificial intelligence (AI) techn...
Autonomous navigation is achieved by training or programming the ship with the stored data about the...
The problem of following, or tracking a predefined path, has been a long standing problem in the con...
The advent of artificial intelligence and deep learning has provided sophisticated functionality for...
Path following is one of the indispensable tools for autonomous ships, which ensures that autonomous...
This thesis is part of the SenSailor Project of the Facultat de Nàutica de Barcelona in which an unm...
Autonomous systems are becoming ubiquitous and gaining momentum within the marine sector. Since the ...
Autonomy is being developed further and further in the maritime navigation area. The wish to create ...
18th International Conference on Automation Science and Engineering (CASE), 20-24 August 2022.-- 8 p...
In this article, we propose a trajectory planning algorithm that enables autonomous surface vessels ...
International audienceThe automatic detection of vessel behaviours from Automatic Identification Sys...
This thesis has provided insight into how machine learning can be beneficial to path planning in con...