Blending algorithms model land cover change by using highly resolved spatial data from one sensor and highly resolved temporal data from another. Because the data are not usually observed concurrently, unaccounted spatial and temporal variances cause error in blending algorithms, yet, to date, there has been no definitive assessment of algorithm performance against spatial and temporal variances. Our objectives were to: (i) evaluate the accuracy of two advanced blending algorithms (STARFM and ESTARFM) and two simple benchmarking algorithms in two landscapes with contrasting spatial and temporal variances; and (ii) synthesise the spatial and temporal conditions under which the algorithms performed best. Landsat-like images were simulated on ...
Surface reflectance adjusted for atmospheric effects is a primary input for land cover change detect...
Interest has been growing with regard to the use of remote sensing data characterized by a fine spat...
The trade-off between spatial and temporal resolution limits the acquisition of dense time series of...
Capturing spatial and temporal dynamics is a key issue for many remote-sensing based applications. C...
The objective of this paper was to evaluate the accuracy of two advanced blending algorithms, Spatia...
The objective of this paper was to evaluate the accuracy of two advanced blending algorithms, Spatia...
The focus of the current study is to compare data fusion methods applied to sensors with medium- and...
Spatial and temporal data fusion approaches have been developed to fuse reflectance imagery from Lan...
Landsat images have been widely used in support of responsible development of natural resources, dis...
The objective of this paper was to evaluate the accuracy of two advanced blending algorithms, Spatia...
Landsat and MODIS data have been widely utilized in many remote sensing applications, however, the t...
In this study, three documented spatiotemporal data fusion models were applied to Landsat-7 and MODI...
Landsat imagery with a 30Â m spatial resolution is well suited for characterizing landscape-level fo...
A semi-physical fusion approach that uses the MODIS BRDF/Albedo land surface characterization produc...
Remotely sensed data, with high spatial and temporal resolutions, can hardly be provided by only one...
Surface reflectance adjusted for atmospheric effects is a primary input for land cover change detect...
Interest has been growing with regard to the use of remote sensing data characterized by a fine spat...
The trade-off between spatial and temporal resolution limits the acquisition of dense time series of...
Capturing spatial and temporal dynamics is a key issue for many remote-sensing based applications. C...
The objective of this paper was to evaluate the accuracy of two advanced blending algorithms, Spatia...
The objective of this paper was to evaluate the accuracy of two advanced blending algorithms, Spatia...
The focus of the current study is to compare data fusion methods applied to sensors with medium- and...
Spatial and temporal data fusion approaches have been developed to fuse reflectance imagery from Lan...
Landsat images have been widely used in support of responsible development of natural resources, dis...
The objective of this paper was to evaluate the accuracy of two advanced blending algorithms, Spatia...
Landsat and MODIS data have been widely utilized in many remote sensing applications, however, the t...
In this study, three documented spatiotemporal data fusion models were applied to Landsat-7 and MODI...
Landsat imagery with a 30Â m spatial resolution is well suited for characterizing landscape-level fo...
A semi-physical fusion approach that uses the MODIS BRDF/Albedo land surface characterization produc...
Remotely sensed data, with high spatial and temporal resolutions, can hardly be provided by only one...
Surface reflectance adjusted for atmospheric effects is a primary input for land cover change detect...
Interest has been growing with regard to the use of remote sensing data characterized by a fine spat...
The trade-off between spatial and temporal resolution limits the acquisition of dense time series of...