Rapid mapping of event landslides is crucial to identify the areas affected by damages as well as for effective disaster response. Traditionally, such maps are generated with visual interpretation of remote sensing imagery (manned/unmanned airborne systems or spaceborne sensors) and/or using pixel-based and object-based methods exploiting data-intensive machine learning algorithms. Recent works have explored the use of convolutional neural networks (CNN), a deep learning algorithm, for mapping landslides from remote sensing data. These methods follow a standard supervised learning workflow that involves training a model using a landslide inventory covering a relatively small area. The trained model is then used to predict landslides in the ...
In this letter, we use deep learning convolutional neural networks (CNNs) to compare the landslide m...
This study proposed a new hybrid model based on the convolutional neural network (CNN) for making ef...
Landslides are considered as one of the most devastating natural hazards in Iran, causing extensive ...
In the world, various natural calamities, like earthquakes and massive rainfalls sometimes combined ...
Landslide hazard has always been a significant source of economic losses and fatalities in the mount...
Beyond the direct hazards of earthquakes, the deposited mass of earthquake-induced landslide (EQIL) ...
Mapping landslides using automated methods is a challenging task, which is still largely done using ...
There is a growing demand for detailed and accurate landslide maps and inventories around the globe,...
There is a growing demand for detailed and accurate landslide maps and inventories around the globe,...
Landslides are movement of soil and rock under the influence of gravity. They are common phenomena t...
There is a growing demand for detailed and accurate landslide maps and inventories around the globe,...
Detecting areas where a landslide or a mudslide might occur is critical for emergency response, disa...
Rainfall-induced landslide inventories can be compiled using remote sensing and topographical data, ...
Remote sensing techniques are now widely spread for the early detection of ground deformation, imple...
In this letter, we use deep learning convolutional neural networks (CNNs) to compare the landslide m...
In this letter, we use deep learning convolutional neural networks (CNNs) to compare the landslide m...
This study proposed a new hybrid model based on the convolutional neural network (CNN) for making ef...
Landslides are considered as one of the most devastating natural hazards in Iran, causing extensive ...
In the world, various natural calamities, like earthquakes and massive rainfalls sometimes combined ...
Landslide hazard has always been a significant source of economic losses and fatalities in the mount...
Beyond the direct hazards of earthquakes, the deposited mass of earthquake-induced landslide (EQIL) ...
Mapping landslides using automated methods is a challenging task, which is still largely done using ...
There is a growing demand for detailed and accurate landslide maps and inventories around the globe,...
There is a growing demand for detailed and accurate landslide maps and inventories around the globe,...
Landslides are movement of soil and rock under the influence of gravity. They are common phenomena t...
There is a growing demand for detailed and accurate landslide maps and inventories around the globe,...
Detecting areas where a landslide or a mudslide might occur is critical for emergency response, disa...
Rainfall-induced landslide inventories can be compiled using remote sensing and topographical data, ...
Remote sensing techniques are now widely spread for the early detection of ground deformation, imple...
In this letter, we use deep learning convolutional neural networks (CNNs) to compare the landslide m...
In this letter, we use deep learning convolutional neural networks (CNNs) to compare the landslide m...
This study proposed a new hybrid model based on the convolutional neural network (CNN) for making ef...
Landslides are considered as one of the most devastating natural hazards in Iran, causing extensive ...