Earthquake is one of the most devastating natural disasters that threaten human life. It is vital to retrieve the building damage status for planning rescue and reconstruction after an earthquake. In cases when the number of completely collapsed buildings is far less than intact or less-affected buildings (e.g., the 2010 Haiti earthquake), it is difficult for the classifier to learn the minority class samples, due to the imbalance learning problem. In this study, the convolutional neural network (CNN) was utilized to identify collapsed buildings from post-event satellite imagery with the proposed workflow. Producer accuracy (PA), user accuracy (UA), overall accuracy (OA), and Kappa were used as evaluation metrics. To overcome the imbalance ...
The accurate and timely identification of the degree of building damage is critical for disaster eme...
Among natural disasters, earthquakes are recorded to have the highest rates of human loss in the pas...
Artificial Neural Network (ANN) is a valuable and well-established inversion technique for the esti...
The accurate and quick derivation of the distribution of damaged building must be considered essenti...
Buildings are essential parts to human life, which provide the place to dwell, educate, entertain, e...
Collapsed buildings are usually linked with the highest number of human casualties reported after a ...
After a natural disaster, the situation is often unclear, though an accurate assessment of the situa...
Collapsed buildings are usually linked with the highest number of human casualties reported after a ...
Extraction of urban building damage caused by earthquake disasters, from very-high-resolution (VHR) ...
Although supervised machine learning classification techniques have been successfully applied to det...
Although supervised machine learning classification techniques have been successfully applied to det...
The seismic damage information of buildings extracted from remote sensing (RS) imagery is meaningful...
In recent years, remote-sensing (RS) technologies have been used together with image processing and ...
Building damage maps can be generated from either optical or Light Detection and Ranging (Lidar) dat...
Automated classification of building damage in remote sensing images enables the rapid and spatially...
The accurate and timely identification of the degree of building damage is critical for disaster eme...
Among natural disasters, earthquakes are recorded to have the highest rates of human loss in the pas...
Artificial Neural Network (ANN) is a valuable and well-established inversion technique for the esti...
The accurate and quick derivation of the distribution of damaged building must be considered essenti...
Buildings are essential parts to human life, which provide the place to dwell, educate, entertain, e...
Collapsed buildings are usually linked with the highest number of human casualties reported after a ...
After a natural disaster, the situation is often unclear, though an accurate assessment of the situa...
Collapsed buildings are usually linked with the highest number of human casualties reported after a ...
Extraction of urban building damage caused by earthquake disasters, from very-high-resolution (VHR) ...
Although supervised machine learning classification techniques have been successfully applied to det...
Although supervised machine learning classification techniques have been successfully applied to det...
The seismic damage information of buildings extracted from remote sensing (RS) imagery is meaningful...
In recent years, remote-sensing (RS) technologies have been used together with image processing and ...
Building damage maps can be generated from either optical or Light Detection and Ranging (Lidar) dat...
Automated classification of building damage in remote sensing images enables the rapid and spatially...
The accurate and timely identification of the degree of building damage is critical for disaster eme...
Among natural disasters, earthquakes are recorded to have the highest rates of human loss in the pas...
Artificial Neural Network (ANN) is a valuable and well-established inversion technique for the esti...