The resemblance of burnt areas with other bright features undermines the certainty of wildfire detection. Bare surfaces and water reflection mislead and directly affect the detection rate. As of now, burnt area characterization and detection of resembling bright features are confined to conventional approaches (change detection, machine learning techniques, semantic segmentation). Consequently, the presented research article established an innovative deep learning instance segmentation model ahead of semantic segmentation. Transfer learning is employed on the ResNet-50/101 as the backbone. For burnt area detection and segmentation, the best performance with deep learning reported in the literature was 98%. The proposed technique was trained...
Abstract In recent decades, global warming has contributed to an increase in the number and intensit...
The use of remote sensing data for burned area mapping hast led to unprecedented advances within the...
Satellite imagery, specifically Landsat, have been widely used for mapping and monitoring wildfire b...
The automatic identification of burned areas is an important task that was mainly managed manually o...
International audienceWildfires stand as one of the most relevant natural disasters worldwide, parti...
In the last decade, the number of forest _res events is growing due to the fast change of earth's cl...
Conflagration is the major safety issue of electric vehicles (EVs). Due to their well-kept appearanc...
Accurate burned area information is needed to assess the impacts of wildfires on people, communities...
Accurate fire load (combustible objects) information is crucial for safety design and resilience ass...
Wildfires have major ecological, social and economic consequences. Information about the extent of b...
In this thesis, a deep convolutional semantic segmentation network is trained to annotate fire and s...
Over the last few years, natural disasters elevated dangerously in terms of immensity and prevalence...
The ability to correctly identify areas damaged by forest wildfires is essential to plan and monitor...
POCI-01-0247-FEDER-038342Governmental offices are still highly concerned with controlling the escala...
Wildfires are a worldwide natural disaster causing important economic damages and loss of lives. Exp...
Abstract In recent decades, global warming has contributed to an increase in the number and intensit...
The use of remote sensing data for burned area mapping hast led to unprecedented advances within the...
Satellite imagery, specifically Landsat, have been widely used for mapping and monitoring wildfire b...
The automatic identification of burned areas is an important task that was mainly managed manually o...
International audienceWildfires stand as one of the most relevant natural disasters worldwide, parti...
In the last decade, the number of forest _res events is growing due to the fast change of earth's cl...
Conflagration is the major safety issue of electric vehicles (EVs). Due to their well-kept appearanc...
Accurate burned area information is needed to assess the impacts of wildfires on people, communities...
Accurate fire load (combustible objects) information is crucial for safety design and resilience ass...
Wildfires have major ecological, social and economic consequences. Information about the extent of b...
In this thesis, a deep convolutional semantic segmentation network is trained to annotate fire and s...
Over the last few years, natural disasters elevated dangerously in terms of immensity and prevalence...
The ability to correctly identify areas damaged by forest wildfires is essential to plan and monitor...
POCI-01-0247-FEDER-038342Governmental offices are still highly concerned with controlling the escala...
Wildfires are a worldwide natural disaster causing important economic damages and loss of lives. Exp...
Abstract In recent decades, global warming has contributed to an increase in the number and intensit...
The use of remote sensing data for burned area mapping hast led to unprecedented advances within the...
Satellite imagery, specifically Landsat, have been widely used for mapping and monitoring wildfire b...