<p>Growing availability of long-term satellite imagery enables change modeling with advanced spatio-temporal statistical methods. Multidimensional arrays naturally match the structure of spatio-temporal satellite data and can provide a clean modeling process for complex spatio-temporal analysis over large datasets. Our study case illustrates the detection of breakpoints in MODIS imagery time series for land cover change in the Brazilian Amazon using the BFAST (Breaks For Additive Season and Trend) change detection framework. BFAST includes an Empirical Fluctuation Process (EFP) to alarm the change and a change point time locating process. We extend the EFP to account for the spatial autocorrelation between spatial neighbors and assess the e...
Anomaly regions in satellite images can reflect unexpected changes of land cover caused by flood, fi...
Thanks to the freely availability of several Satellite Image Time Series (SITS) covering the Earth, ...
International audienceNowadays, huge volume of satellite images, via the different Earth Observation...
Growing availability of long-term satellite imagery enables change modeling with advanced spatio-tem...
A wealth of remotely sensed image time series covering large areas is now available to the earth sci...
A challenge in phenology studies is understanding what constitutes phenological change amidst backgr...
Multi-temporal satellite images are available at very high revisit frequency, allowing the character...
Abstract—An automated land cover change detection method is proposed that uses coarse spatial resolu...
An automated land cover change detection method is pro-posed that uses coarse resolution hyper-tempo...
BFAST Lite is a newly proposed unsupervised time series change detection algorithm that is derived f...
Tracking land cover changes using remotely-sensed data contributes to evaluating to what extent huma...
This paper addresses the complex task of detecting and characterizing changes in dense Satellite Ima...
International audienceThe expansion of satellite technologies makes remote sensing data abundantly a...
A great effort has been put on developing technologies that can process High Resolution (HR) satelli...
The use of satellite image time series analysis and machine learning methods brings new opportunitie...
Anomaly regions in satellite images can reflect unexpected changes of land cover caused by flood, fi...
Thanks to the freely availability of several Satellite Image Time Series (SITS) covering the Earth, ...
International audienceNowadays, huge volume of satellite images, via the different Earth Observation...
Growing availability of long-term satellite imagery enables change modeling with advanced spatio-tem...
A wealth of remotely sensed image time series covering large areas is now available to the earth sci...
A challenge in phenology studies is understanding what constitutes phenological change amidst backgr...
Multi-temporal satellite images are available at very high revisit frequency, allowing the character...
Abstract—An automated land cover change detection method is proposed that uses coarse spatial resolu...
An automated land cover change detection method is pro-posed that uses coarse resolution hyper-tempo...
BFAST Lite is a newly proposed unsupervised time series change detection algorithm that is derived f...
Tracking land cover changes using remotely-sensed data contributes to evaluating to what extent huma...
This paper addresses the complex task of detecting and characterizing changes in dense Satellite Ima...
International audienceThe expansion of satellite technologies makes remote sensing data abundantly a...
A great effort has been put on developing technologies that can process High Resolution (HR) satelli...
The use of satellite image time series analysis and machine learning methods brings new opportunitie...
Anomaly regions in satellite images can reflect unexpected changes of land cover caused by flood, fi...
Thanks to the freely availability of several Satellite Image Time Series (SITS) covering the Earth, ...
International audienceNowadays, huge volume of satellite images, via the different Earth Observation...