To address the need for timely information on newly deforested areas at medium resolution scale, we introduce a Bayesian approach to combine SAR and optical time series for near real-time deforestation detection. Once a new image of either of the input time series is available, the conditional probability of deforestation is computed using Bayesian updating, and deforestation events are indicated. Future observations are used to update the conditional probability of deforestation and, thus, to confirm or reject an indicated deforestation event. A proof of concept was demonstrated using Landsat NDVI and ALOS PALSAR time series acquired at an evergreen forest plantation in Fiji. We emulated a near real-time scenario and assessed the deforesta...
Current methods for monitoring deforestation from satellite data at sub-annual scales require pixel ...
Monitoring large forest areas is presently feasible with satellite remote sensing as opposed to time...
The REDD+ framework requires accurate estimates of deforestation. These are derived by ground measur...
To address the need for timely information on newly deforested areas at medium resolution scale, we ...
Fusion of optical and SAR time series imagery has the potential to improve forest monitoring in trop...
This article focuses on mapping tropical deforestation using time series and machine learning algori...
Combining observations from multiple optical and synthetic aperture radar (SAR) satellites can provi...
Tropical forests are the largest of the global forest biomes and play a crucial role in the global c...
Many tropical countries suffer from persistent cloud cover inhibiting spatially consistent reporting...
This article focuses on mapping tropical deforestation using time series and machine learning algori...
We want to present results of the Sentinel4REDD project. The overall aim of the Sentinel4REDD-Projec...
Monitoring large forest areas is presently feasible with satellite remote sensing as opposed to time...
Abstract — This paper presents an assessment of the use of the ALOS PALSAR, Kyoto and Carbon Initiat...
Landsat time series Breaks For Additive Season and Trend (BFAST) breakpoint detection was identified...
Current methods for monitoring deforestation from satellite data at sub-annual scales require pixel ...
Monitoring large forest areas is presently feasible with satellite remote sensing as opposed to time...
The REDD+ framework requires accurate estimates of deforestation. These are derived by ground measur...
To address the need for timely information on newly deforested areas at medium resolution scale, we ...
Fusion of optical and SAR time series imagery has the potential to improve forest monitoring in trop...
This article focuses on mapping tropical deforestation using time series and machine learning algori...
Combining observations from multiple optical and synthetic aperture radar (SAR) satellites can provi...
Tropical forests are the largest of the global forest biomes and play a crucial role in the global c...
Many tropical countries suffer from persistent cloud cover inhibiting spatially consistent reporting...
This article focuses on mapping tropical deforestation using time series and machine learning algori...
We want to present results of the Sentinel4REDD project. The overall aim of the Sentinel4REDD-Projec...
Monitoring large forest areas is presently feasible with satellite remote sensing as opposed to time...
Abstract — This paper presents an assessment of the use of the ALOS PALSAR, Kyoto and Carbon Initiat...
Landsat time series Breaks For Additive Season and Trend (BFAST) breakpoint detection was identified...
Current methods for monitoring deforestation from satellite data at sub-annual scales require pixel ...
Monitoring large forest areas is presently feasible with satellite remote sensing as opposed to time...
The REDD+ framework requires accurate estimates of deforestation. These are derived by ground measur...