Oil spills pose a major threat of the oceanic and coastal environments, hence, an automatic detection and a continuous monitoring system comprises an appealing option for minimizing the response time of relevant operations. Numerous efforts have been conducted towards such solutions by exploiting a variety of sensing systems such as satellite Synthetic Aperture Radar (SAR) which can identify oil spills over sea surfaces in any environmental conditions and operational time. Such approaches include the use of artificial neural networks which effectively identify the polluted areas. Considering their remarkable abilities in many applications, deep Convolutional Neural Networks (DCNN) could surpass limitations and performances of previously pro...
Abstract—A neural network approach for semi-automatic de-tection of oil spills in European remote se...
Synthetic Aperture Radar (SAR) images are extensively used for dark formation detection in the marin...
In this work, we use deep neural autoencoders to segment oil spills from Side-Looking Airborne Radar...
Oil spills pose a major threat of the oceanic and coastal environments, hence, an automatic detectio...
Oil spill pollution comprises a significant threat of the oceanic and coastal ecosystems. A continuo...
Oil spill is considered one of the main threats to marine and coastal environments. Efficient monito...
We propose a deep-learning framework to detect and categorize oil spills in synthetic aperture radar...
The frequency of marine oil spills has increased in recent years. The growing exploitation of marine...
The frequency of marine oil spills has increased in recent years. The growing exploitation of marine...
Oil spill pollution plays a significant role in damaging marine ecosystem. Discharge of oil due to t...
Oil spills, caused by accidents or by ships cleaning their tanks, represent big threats for maritime...
Synthetic aperture radar (SAR) has been widely used to detect oil-spill areas through the backscatte...
AbstractBuilding an oil spill segmentation model is very challenging because of the limited availabl...
With the launch of the Italian constellation of small satellites for the Mediterranean basin observa...
Polarimetric synthetic aperture radar (SAR) remote sensing provides an outstanding tool in oil spill...
Abstract—A neural network approach for semi-automatic de-tection of oil spills in European remote se...
Synthetic Aperture Radar (SAR) images are extensively used for dark formation detection in the marin...
In this work, we use deep neural autoencoders to segment oil spills from Side-Looking Airborne Radar...
Oil spills pose a major threat of the oceanic and coastal environments, hence, an automatic detectio...
Oil spill pollution comprises a significant threat of the oceanic and coastal ecosystems. A continuo...
Oil spill is considered one of the main threats to marine and coastal environments. Efficient monito...
We propose a deep-learning framework to detect and categorize oil spills in synthetic aperture radar...
The frequency of marine oil spills has increased in recent years. The growing exploitation of marine...
The frequency of marine oil spills has increased in recent years. The growing exploitation of marine...
Oil spill pollution plays a significant role in damaging marine ecosystem. Discharge of oil due to t...
Oil spills, caused by accidents or by ships cleaning their tanks, represent big threats for maritime...
Synthetic aperture radar (SAR) has been widely used to detect oil-spill areas through the backscatte...
AbstractBuilding an oil spill segmentation model is very challenging because of the limited availabl...
With the launch of the Italian constellation of small satellites for the Mediterranean basin observa...
Polarimetric synthetic aperture radar (SAR) remote sensing provides an outstanding tool in oil spill...
Abstract—A neural network approach for semi-automatic de-tection of oil spills in European remote se...
Synthetic Aperture Radar (SAR) images are extensively used for dark formation detection in the marin...
In this work, we use deep neural autoencoders to segment oil spills from Side-Looking Airborne Radar...