Remote sensing images have long been preferred to perform building damage assessments. The recently proposed methods to extract damaged regions from remote sensing imagery rely on convolutional neural networks (CNN). The common approach is to train a CNN independently considering each of the different resolution levels (satellite, aerial, and terrestrial) in a binary classification approach. In this regard, an ever-growing amount of multi-resolution imagery are being collected, but the current approaches use one single resolution as their input. The use of up/down-sampled images for training has been reported as beneficial for the image classification accuracy both in the computer vision and remote sensing domains. However, it is still uncl...
Remotely sensed data can provide the basis for timely and efficient building damage maps that are of...
Automatic building extraction from remote sensing imagery is important in many applications. The suc...
The accurate and timely identification of the degree of building damage is critical for disaster eme...
Remote sensing images have long been preferred to perform building damage assessments. The recently ...
Remote sensing images have long been preferred to perform building damage assessments. The recently ...
The localization and detailed assessment of damaged buildings after a disastrous event is of utmost ...
The localization and detailed assessment of damaged buildings after a disastrous event is of utmost ...
Automated classification of building damage in remote sensing images enables the rapid and spatially...
Automated classification of building damage in remote sensing images enables the rapid and spatially...
After a natural disaster, the situation is often unclear, though an accurate assessment of the situa...
Over the past decades, a special interest has been given to remote-sensing imagery to automate the d...
Over the past decades, a special interest has been given to remote-sensing imagery to automate the d...
Oblique aerial images offer views of both building roofs and façades, and thus have been recognized ...
In recent years, remote-sensing (RS) technologies have been used together with image processing and ...
Remotely sensed data can provide the basis for timely and efficient building damage maps that are of...
Remotely sensed data can provide the basis for timely and efficient building damage maps that are of...
Automatic building extraction from remote sensing imagery is important in many applications. The suc...
The accurate and timely identification of the degree of building damage is critical for disaster eme...
Remote sensing images have long been preferred to perform building damage assessments. The recently ...
Remote sensing images have long been preferred to perform building damage assessments. The recently ...
The localization and detailed assessment of damaged buildings after a disastrous event is of utmost ...
The localization and detailed assessment of damaged buildings after a disastrous event is of utmost ...
Automated classification of building damage in remote sensing images enables the rapid and spatially...
Automated classification of building damage in remote sensing images enables the rapid and spatially...
After a natural disaster, the situation is often unclear, though an accurate assessment of the situa...
Over the past decades, a special interest has been given to remote-sensing imagery to automate the d...
Over the past decades, a special interest has been given to remote-sensing imagery to automate the d...
Oblique aerial images offer views of both building roofs and façades, and thus have been recognized ...
In recent years, remote-sensing (RS) technologies have been used together with image processing and ...
Remotely sensed data can provide the basis for timely and efficient building damage maps that are of...
Remotely sensed data can provide the basis for timely and efficient building damage maps that are of...
Automatic building extraction from remote sensing imagery is important in many applications. The suc...
The accurate and timely identification of the degree of building damage is critical for disaster eme...