The world’s high-resolution images are supplied by a radar system named Synthetic Aperture Radar (SAR). Semantic SAR image segmentation proposes a computer-based solution to make segmentation tasks easier. When conducting scientific research, accessing freely available datasets and images with low noise levels is rare. However, SAR images can be accessed for free. We propose a novel process for labeling Sentinel-1 SAR radar images, which the European Space Agency (ESA) provides free of charge. This process involves denoising the images and using an automatically created dataset with pioneering deep neural networks to augment the results of the semantic segmentation task. In order to exhibit the power of our denoising process, we match the r...
Publisher Copyright: © 2008-2012 IEEE.Land cover (LC) mapping is essential for monitoring the enviro...
To improve the quality of SAR images, we proposed to train a deep neural network with TerraSAR-X. Th...
Radar imaging, particularly Synthetic Aperture Radar (SAR) are pioneer technologies in the field of ...
The world’s high-resolution images are supplied by a radar system named Synthetic Aperture Radar (SA...
The publicly accessible Sentinel 1 satellite has paved the way for numerous applications such as env...
Image segmentation is an area of study which has generated a lot of interest in engineering in the l...
Deep learning is increasingly popular in remote sensing communities and already successful in land c...
International audienceThrough the Synthetic Aperture Radar (SAR) embarked on the satellites Sentinel...
With the purpose of semantic extraction using TerraSAR-X dataset, in this paper, the problem has bee...
International audienceThis paper addresses the semantic segmentation of synthetic aperture radar (SA...
We provide preprocessed Sentinel-1 SAR images with corresponding CORINE labels that can be used for ...
Synthetic aperture radar (SAR) data is becoming increasingly available to a wide range of users thro...
SARBake is an algorithm described in my first article "Convolutional Neural Networks for SAR Image S...
Publisher Copyright: © 2008-2012 IEEE.Land cover (LC) mapping is essential for monitoring the enviro...
To improve the quality of SAR images, we proposed to train a deep neural network with TerraSAR-X. Th...
Radar imaging, particularly Synthetic Aperture Radar (SAR) are pioneer technologies in the field of ...
The world’s high-resolution images are supplied by a radar system named Synthetic Aperture Radar (SA...
The publicly accessible Sentinel 1 satellite has paved the way for numerous applications such as env...
Image segmentation is an area of study which has generated a lot of interest in engineering in the l...
Deep learning is increasingly popular in remote sensing communities and already successful in land c...
International audienceThrough the Synthetic Aperture Radar (SAR) embarked on the satellites Sentinel...
With the purpose of semantic extraction using TerraSAR-X dataset, in this paper, the problem has bee...
International audienceThis paper addresses the semantic segmentation of synthetic aperture radar (SA...
We provide preprocessed Sentinel-1 SAR images with corresponding CORINE labels that can be used for ...
Synthetic aperture radar (SAR) data is becoming increasingly available to a wide range of users thro...
SARBake is an algorithm described in my first article "Convolutional Neural Networks for SAR Image S...
Publisher Copyright: © 2008-2012 IEEE.Land cover (LC) mapping is essential for monitoring the enviro...
To improve the quality of SAR images, we proposed to train a deep neural network with TerraSAR-X. Th...
Radar imaging, particularly Synthetic Aperture Radar (SAR) are pioneer technologies in the field of ...