Efficiently and automatically acquiring information on earthquake damage through remote sensing has posed great challenges because the classical methods of detecting houses damaged by destructive earthquakes are often both time consuming and low in accuracy. A series of deep-learning-based techniques have been developed and recent studies have demonstrated their high intelligence for automatic target extraction for natural and remote sensing images. For the detection of small artificial targets, current studies show that You Only Look Once (YOLO) has a good performance in aerial and Unmanned Aerial Vehicle (UAV) images. However, less work has been conducted on the extraction of damaged houses. In this study, we propose a YOLOv5s-ViT-BiFPN-b...
Using aerial cameras, satellite remote sensing or unmanned aerial vehicles (UAV) equipped with camer...
The seismic damage information of buildings extracted from remote sensing (RS) imagery is meaningful...
With the recent tremendous improvements in the spatial, spectral, and temporal resolutions of remote...
Immediately after an earthquake, rapid disaster management is the main challenge for relevant organi...
Real-time building damage detection effectively improves the timeliness of post-earthquake assessmen...
When extracting building damage information, we can only determine whether the building is collapsed...
Fully convolutional networks (FCN) such as UNet and DeepLabv3+ are highly competitive when being app...
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...
The recovery phase following an earthquake event is essential for urban areas with a significant num...
We present an unsupervised deep learning approach for post-disaster building damage detection that c...
The area affected by the earthquake is vast and often difficult to entirely cover, and the earthquak...
The accurate and timely identification of the degree of building damage is critical for disaster eme...
ABSTRACT: Remote sensing technology is effective to grasp the damage distributions from various natu...
Using aerial cameras, satellite remote sensing or unmanned aerial vehicles (UAV) equipped with camer...
The seismic damage information of buildings extracted from remote sensing (RS) imagery is meaningful...
With the recent tremendous improvements in the spatial, spectral, and temporal resolutions of remote...
Immediately after an earthquake, rapid disaster management is the main challenge for relevant organi...
Real-time building damage detection effectively improves the timeliness of post-earthquake assessmen...
When extracting building damage information, we can only determine whether the building is collapsed...
Fully convolutional networks (FCN) such as UNet and DeepLabv3+ are highly competitive when being app...
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...
The recovery phase following an earthquake event is essential for urban areas with a significant num...
We present an unsupervised deep learning approach for post-disaster building damage detection that c...
The area affected by the earthquake is vast and often difficult to entirely cover, and the earthquak...
The accurate and timely identification of the degree of building damage is critical for disaster eme...
ABSTRACT: Remote sensing technology is effective to grasp the damage distributions from various natu...
Using aerial cameras, satellite remote sensing or unmanned aerial vehicles (UAV) equipped with camer...
The seismic damage information of buildings extracted from remote sensing (RS) imagery is meaningful...
With the recent tremendous improvements in the spatial, spectral, and temporal resolutions of remote...