The automatic identification of burned areas is an important task that was mainly managed manually or semi-automatically in the past. In the last years, thanks to the availability of novel deep neural network architectures, automatic segmentation solutions have been proposed also in the emergency management domain. The most recent works in burned area delineation leverage on Convolutional Neural Networks (CNNs) to automatically identify regions that were previously affected by forest wildfires. A largely adopted segmentation model, U-Net, demonstrated good performances for the task under analysis, but in some cases a high overestimation of burned areas is given, leading to low precision scores. Given the recent advances in the field of NLP ...
Since remote sensing images of post-fire vegetation are characterized by high resolution, multiple i...
Detection of burn marks due to wildfires in inaccessible rain forests is important for various disas...
Conflagration is the major safety issue of electric vehicles (EVs). Due to their well-kept appearanc...
The ability to correctly identify areas damaged by forest wildfires is essential to plan and monitor...
Abstract In recent decades, global warming has contributed to an increase in the number and intensit...
In this paper, we address the problem of forest fires’ early detection and segmentation in order to ...
The resemblance of burnt areas with other bright features undermines the certainty of wildfire detec...
Accurate burned area information is needed to assess the impacts of wildfires on people, communities...
Support vector machines are shown to be highly effective in mapping burn extent from hyperspatial im...
Wildfires stand as one of the most relevant natural disasters worldwide, particularly more so due to...
Wildfires are one of the most destructive natural disasters that can affect our environment, with si...
Wildfires have major ecological, social and economic consequences. Information about the extent of b...
Satellite imagery, specifically Landsat, have been widely used for mapping and monitoring wildfire b...
The use of remote sensing data for burned area mapping hast led to unprecedented advances within the...
Detection of burn marks due to wildfires in inaccessible rain forests is important for various disas...
Since remote sensing images of post-fire vegetation are characterized by high resolution, multiple i...
Detection of burn marks due to wildfires in inaccessible rain forests is important for various disas...
Conflagration is the major safety issue of electric vehicles (EVs). Due to their well-kept appearanc...
The ability to correctly identify areas damaged by forest wildfires is essential to plan and monitor...
Abstract In recent decades, global warming has contributed to an increase in the number and intensit...
In this paper, we address the problem of forest fires’ early detection and segmentation in order to ...
The resemblance of burnt areas with other bright features undermines the certainty of wildfire detec...
Accurate burned area information is needed to assess the impacts of wildfires on people, communities...
Support vector machines are shown to be highly effective in mapping burn extent from hyperspatial im...
Wildfires stand as one of the most relevant natural disasters worldwide, particularly more so due to...
Wildfires are one of the most destructive natural disasters that can affect our environment, with si...
Wildfires have major ecological, social and economic consequences. Information about the extent of b...
Satellite imagery, specifically Landsat, have been widely used for mapping and monitoring wildfire b...
The use of remote sensing data for burned area mapping hast led to unprecedented advances within the...
Detection of burn marks due to wildfires in inaccessible rain forests is important for various disas...
Since remote sensing images of post-fire vegetation are characterized by high resolution, multiple i...
Detection of burn marks due to wildfires in inaccessible rain forests is important for various disas...
Conflagration is the major safety issue of electric vehicles (EVs). Due to their well-kept appearanc...