Ship detection using SAR imagery and machine learning techniques
Remacle, Delphine
Promotor(s) : Van Messem, Arnout ; Kirkove, Murielle ; Barth, Alexander
Date of defense : 6-Sep-2023 • Permalink : http://hdl.handle.net/2268.2/18468
Details
Title : | Ship detection using SAR imagery and machine learning techniques |
Translated title : | [fr] Détection de bateaux à l'aide d'images SAR et de techniques d'apprentissage automatique |
Author : | Remacle, Delphine |
Date of defense : | 6-Sep-2023 |
Advisor(s) : | Van Messem, Arnout
Kirkove, Murielle Barth, Alexander |
Committee's member(s) : | Haesbroeck, Gentiane
Rigo, Michel Schneiders, Jean-Pierre Geurts, Pierre |
Language : | English |
Number of pages : | 140 |
Keywords : | [en] machine learning [en] computer vision [en] deep learning [en] ship detection [en] SAR imagery |
Discipline(s) : | Physical, chemical, mathematical & earth Sciences > Mathematics |
Institution(s) : | Université de Liège, Liège, Belgique |
Degree: | Master en sciences mathématiques, à finalité approfondie |
Faculty: | Master thesis of the Faculté des Sciences |
Abstract
[en] This master's thesis is part of a project carried out by several students, which goal is to find a suitable program of ship detection from Synthetic-Aperture Radar (SAR) imagery by using machine learning techniques. Here, we have tested the following deep learning techniques: YOLO versions 3 and 4, and Mask R-CNN.
Cite this master thesis
All documents available on MatheO are protected by copyright and subject to the usual rules for fair use.
The University of Liège does not guarantee the scientific quality of these students' works or the accuracy of all the information they contain.
The University of Liège does not guarantee the scientific quality of these students' works or the accuracy of all the information they contain.