Satellite earth observation is being increasingly used to monitor forests across the world. Freely available Landsat data stretching back four decades, coupled with advances in computer processing capabilities, has enabled new time-series techniques for analyzing forest change. Typically, these methods track individual pixel values over time, through the use of various spectral indices. This study examines the utility of eight spectral indices for characterizing fire disturbance and recovery in sclerophyll forests, in order to determine their relative merits in the context of Landsat time-series. Although existing research into Landsat indices is comprehensive, this study presents a new approach, by comparing the distributions of pre and po...
Remote sensing observations provide useful spatially explicit and temporally dense information for m...
Landsat time series (LTS) enable the characterization of forest recovery post-disturbance over large...
Forests are the largest aboveground sink for atmospheric carbon (C), and understanding how they chan...
Satellite earth observation is being increasingly used to monitor forests across the world. Freely a...
Satellite earth observation is being increasingly used to monitor forests across the world. Freely a...
Across the world, millions of hectares of forest are burned by wildfires each year. Satellite remote...
In this study, we characterised the temporal-spectral patterns associated with identifying acute-sev...
In this study, we characterised the temporal-spectral patterns associated with identifying acute-sev...
Analysis of satellite imagery combined with Geographic Information Systems (GIS), often allows for o...
Characterizing forest responses to disturbance over large geographic areas represents one of the mos...
Australia is one of the most fire-prone continents in the world (King et al, 2011). Fire can be a gr...
Retrospective identification of fire severity can improve our understanding of fire behaviour and ec...
Large-scale forest monitoring benefits greatly from change detection analysis based on remote sensin...
We aimed to analyze the relationship between fire regime attributes and the post-fire greenness reco...
Several remote sensing studies have discussed the potential of satellite imagery as an alternative f...
Remote sensing observations provide useful spatially explicit and temporally dense information for m...
Landsat time series (LTS) enable the characterization of forest recovery post-disturbance over large...
Forests are the largest aboveground sink for atmospheric carbon (C), and understanding how they chan...
Satellite earth observation is being increasingly used to monitor forests across the world. Freely a...
Satellite earth observation is being increasingly used to monitor forests across the world. Freely a...
Across the world, millions of hectares of forest are burned by wildfires each year. Satellite remote...
In this study, we characterised the temporal-spectral patterns associated with identifying acute-sev...
In this study, we characterised the temporal-spectral patterns associated with identifying acute-sev...
Analysis of satellite imagery combined with Geographic Information Systems (GIS), often allows for o...
Characterizing forest responses to disturbance over large geographic areas represents one of the mos...
Australia is one of the most fire-prone continents in the world (King et al, 2011). Fire can be a gr...
Retrospective identification of fire severity can improve our understanding of fire behaviour and ec...
Large-scale forest monitoring benefits greatly from change detection analysis based on remote sensin...
We aimed to analyze the relationship between fire regime attributes and the post-fire greenness reco...
Several remote sensing studies have discussed the potential of satellite imagery as an alternative f...
Remote sensing observations provide useful spatially explicit and temporally dense information for m...
Landsat time series (LTS) enable the characterization of forest recovery post-disturbance over large...
Forests are the largest aboveground sink for atmospheric carbon (C), and understanding how they chan...