In this paper we address the feature selection problem for X-SAR images and further the segmentation of specific chosen classes. After defining a suitable feature space for X-SAR images we select the most significant ones via a supervised machine learning approach: the 1-norm SVM. The selected features will be used for segmentation purposes, in order to segment water areas from the background. We shall see that the most relevant features are based on texture elements. So the segmentation is texture based and achieved with variational calculus and level set methods. The work is mainly focused on urban park X-SAR SpotLight images, where lakes and rivers are often present. The images are collected with the COSMO-SkyMed satellites constellation...
This paper explores automatic segmentation of synthetic aperture radar (SAR) satellite images of sea...
This work is an enlarged version of the paper - Discriminating urban environments using multiscale t...
International audienceThe above classification model (one 20x20 km imagette = one label) is then use...
Synthetic Aperture Radar (SAR), as a microwave sensor that can sense a target all day or night under...
Land surface water mapping is one of the most basic classification tasks to distinguish water bodies...
Change detection is the art of quantifying the changes in Synthetic Aperture Radar (SAR) images occu...
SAR images are increasingly used for delineating water bodies. The high revisit frequency of Sentine...
Land-cover classification in Synthetic Aperture Radar (SAR) images has significance in both civil an...
Timely identifying and detecting water bodies from SAR images are significant for flood monitoring a...
Nowadays, Synthetic Aperture Radar (SAR) images have been widely used in the industry and the scient...
The new generation of spaceborne instruments, capable of capturing a large amount of very-high resol...
Detection of surface water from satellite images is important for water management purposes like for...
Image segmentation is a very mature field that is used in several applications such as medical imagi...
This paper exploits an effective water extraction method using SAR imagery in preparation for flood ...
In the last years, the spatial resolution of remote sensing sensors and imagery has continuously imp...
This paper explores automatic segmentation of synthetic aperture radar (SAR) satellite images of sea...
This work is an enlarged version of the paper - Discriminating urban environments using multiscale t...
International audienceThe above classification model (one 20x20 km imagette = one label) is then use...
Synthetic Aperture Radar (SAR), as a microwave sensor that can sense a target all day or night under...
Land surface water mapping is one of the most basic classification tasks to distinguish water bodies...
Change detection is the art of quantifying the changes in Synthetic Aperture Radar (SAR) images occu...
SAR images are increasingly used for delineating water bodies. The high revisit frequency of Sentine...
Land-cover classification in Synthetic Aperture Radar (SAR) images has significance in both civil an...
Timely identifying and detecting water bodies from SAR images are significant for flood monitoring a...
Nowadays, Synthetic Aperture Radar (SAR) images have been widely used in the industry and the scient...
The new generation of spaceborne instruments, capable of capturing a large amount of very-high resol...
Detection of surface water from satellite images is important for water management purposes like for...
Image segmentation is a very mature field that is used in several applications such as medical imagi...
This paper exploits an effective water extraction method using SAR imagery in preparation for flood ...
In the last years, the spatial resolution of remote sensing sensors and imagery has continuously imp...
This paper explores automatic segmentation of synthetic aperture radar (SAR) satellite images of sea...
This work is an enlarged version of the paper - Discriminating urban environments using multiscale t...
International audienceThe above classification model (one 20x20 km imagette = one label) is then use...