Given the common trade-off between the spatial and temporal resolutions of current satellite sensors, spatial-temporal data fusion methods could be applied to produce fused remotely sensed data with synthetic fine spatial resolution (FR) and high repeat frequency. Such fused data are required to provide a comprehensive understanding of Earth's surface land cover dynamics. In this research, a novel Spatial-Temporal Fraction Map Fusion (STFMF) model is proposed to produce a series of fine-spatial-temporal-resolution land cover fraction maps by fusing coarse-spatial-fine-temporal and fine-spatial-coarse-temporal fraction maps, which may be generated from multi-scale remotely sensed images. The STFMF has two main stages. First, FR fraction chan...
Satellite time series with high spatial resolution is critical for monitoring land surface dynamics ...
The trade-off between spatial and temporal resolution limits the acquisition of dense time series of...
The trade-off between spatial and temporal resolution limits the acquisition of dense time series of...
Given the common trade-off between the spatial and temporal resolutions of current satellite sensors...
Studies of land cover dynamics would benefit greatly from the generation of land cover maps at both ...
Spatio-temporal image fusion methods have become a popular means to produce remotely sensed data set...
High spatiotemporal resolution satellite imagery is useful for natural resource management and monit...
Spatiotemporal image fusion is considered as a promising way to provide Earth observations with both...
In recent years, many spatial and temporal satellite image fusion (STIF) methods have been developed...
© 2020 by the authors. The generation of land cover maps with both fine spatial and temporal resolut...
The trade-off between spatial and temporal resolution limits the acquisition of dense time series of...
High spatiotemporal resolution satellite imagery is useful for natural resource management and monit...
Remotely sensed data, with high spatial and temporal resolutions, can hardly be provided by only one...
Abstract: High spatiotemporal resolution satellite imagery is useful for natural resource management...
Spatiotemporal satellite image fusion (STIF) has been widely applied in land surface monitoring to g...
Satellite time series with high spatial resolution is critical for monitoring land surface dynamics ...
The trade-off between spatial and temporal resolution limits the acquisition of dense time series of...
The trade-off between spatial and temporal resolution limits the acquisition of dense time series of...
Given the common trade-off between the spatial and temporal resolutions of current satellite sensors...
Studies of land cover dynamics would benefit greatly from the generation of land cover maps at both ...
Spatio-temporal image fusion methods have become a popular means to produce remotely sensed data set...
High spatiotemporal resolution satellite imagery is useful for natural resource management and monit...
Spatiotemporal image fusion is considered as a promising way to provide Earth observations with both...
In recent years, many spatial and temporal satellite image fusion (STIF) methods have been developed...
© 2020 by the authors. The generation of land cover maps with both fine spatial and temporal resolut...
The trade-off between spatial and temporal resolution limits the acquisition of dense time series of...
High spatiotemporal resolution satellite imagery is useful for natural resource management and monit...
Remotely sensed data, with high spatial and temporal resolutions, can hardly be provided by only one...
Abstract: High spatiotemporal resolution satellite imagery is useful for natural resource management...
Spatiotemporal satellite image fusion (STIF) has been widely applied in land surface monitoring to g...
Satellite time series with high spatial resolution is critical for monitoring land surface dynamics ...
The trade-off between spatial and temporal resolution limits the acquisition of dense time series of...
The trade-off between spatial and temporal resolution limits the acquisition of dense time series of...