The availability of concurrently high spatiotemporal resolution remote sensing data is highly desirable as they represent a key element for effective monitoring in various environmental applications. However, due to the tradeoff between the spatial resolution and acquisition frequency of current satellites, such data are still lacking. Many studies have been undertaken trying to overcome these problems; however, a couple of long-standing limitations remain, including accommodating abrupt temporal changes, dealing with complex and heterogeneous landscapes, and integrating other satellite datasets as well. Accordingly, this paper proposes a deep learning spatiotemporal data fusion approach based on Very Deep Super-Resolution (VDSR) to fuse th...
It is still difficult to obtain high-resolution and fast-updated NDVI data, and spatiotemporal fusio...
Monitoring the spatio-temporal development of vegetation is a challenging task in heterogeneous and ...
Due to technical limitations, it is impossible to have high resolution in both spatial and temporal ...
Modern Earth Observation systems provide remote sensing data at different temporal and spatial resol...
Dense time-series remote sensing data with detailed spatial information are highly desired for the m...
Different satellite images may consist of variable numbers of channels which have different resoluti...
Time series vegetation indices with high spatial resolution and high temporal frequency are importan...
Due to technical and budget limitations, there are inevitably some trade-offs in the design of remot...
Spatiotemporal data fusion is a key technique for generating unified time-series images from various...
Studies related to vegetation dynamics in heterogeneous landscapes often require Normalized Differen...
The increasing availability and variety of global satellite products provide a new level of data wit...
High spatial and temporal resolution remote sensing data play an important role in monitoring the ra...
International audienceModern Earth Observation systems provide remote sensing data at different temp...
Remote sensing images with high temporal and spatial resolutions play a crucial role in land surface...
With the extremely rapid advances in remote sensing (RS) technology, a great quantity of Earth obser...
It is still difficult to obtain high-resolution and fast-updated NDVI data, and spatiotemporal fusio...
Monitoring the spatio-temporal development of vegetation is a challenging task in heterogeneous and ...
Due to technical limitations, it is impossible to have high resolution in both spatial and temporal ...
Modern Earth Observation systems provide remote sensing data at different temporal and spatial resol...
Dense time-series remote sensing data with detailed spatial information are highly desired for the m...
Different satellite images may consist of variable numbers of channels which have different resoluti...
Time series vegetation indices with high spatial resolution and high temporal frequency are importan...
Due to technical and budget limitations, there are inevitably some trade-offs in the design of remot...
Spatiotemporal data fusion is a key technique for generating unified time-series images from various...
Studies related to vegetation dynamics in heterogeneous landscapes often require Normalized Differen...
The increasing availability and variety of global satellite products provide a new level of data wit...
High spatial and temporal resolution remote sensing data play an important role in monitoring the ra...
International audienceModern Earth Observation systems provide remote sensing data at different temp...
Remote sensing images with high temporal and spatial resolutions play a crucial role in land surface...
With the extremely rapid advances in remote sensing (RS) technology, a great quantity of Earth obser...
It is still difficult to obtain high-resolution and fast-updated NDVI data, and spatiotemporal fusio...
Monitoring the spatio-temporal development of vegetation is a challenging task in heterogeneous and ...
Due to technical limitations, it is impossible to have high resolution in both spatial and temporal ...