The focus of the current study is to compare data fusion methods applied to sensors with medium- and high-spatial resolutions. Two documented methods are applied, the spatial and temporal adaptive reflectance fusion model (STARFM) and an unmixing-based method which proposes a Bayesian formulation to incorporate prior spectral information. Furthermore, the strengths of both algorithms are combined in a novel data fusion method: the Spatial and Temporal Reflectance Unmixing Model (STRUM). The potential of each method is demonstrated using simulation imagery and Landsat and MODIS imagery. The theoretical basis of the algorithms causes STARFM and STRUM to produce Landsat-like reflectances while preserving the spatial patterns found in Landsat i...
Studies related to vegetation dynamics in heterogeneous landscapes often require Normalized Differen...
Landsat images have been widely used in support of responsible development of natural resources, dis...
Blending algorithms model land cover change by using highly resolved spatial data from one sensor an...
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...
The trade-off between spatial and temporal resolution limits the acquisition of dense time series of...
In this study, three documented spatiotemporal data fusion models were applied to Landsat-7 and MODI...
Crop condition and natural vegetation monitoring require high resolution remote sensing imagery in b...
Spatial and temporal data fusion approaches have been developed to fuse reflectance imagery from Lan...
Spatiotemporal fusion of remote sensing data is essential for generating high spatial and temporal r...
Remote sensing provides rich sources of data for the monitoring of land surface dynamics. However, s...
Landsat and MODIS data have been widely utilized in many remote sensing applications, however, the t...
Remote sensing technology plays an important role in monitoring rapid changes of the Earth's surface...
Remotely sensed data, with high spatial and temporal resolutions, can hardly be provided by only one...
We present a new, simple, and efficient approach to fusing MODIS and Landsat images. It is well know...
Studies related to vegetation dynamics in heterogeneous landscapes often require Normalized Differen...
Landsat images have been widely used in support of responsible development of natural resources, dis...
Blending algorithms model land cover change by using highly resolved spatial data from one sensor an...
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...
The trade-off between spatial and temporal resolution limits the acquisition of dense time series of...
In this study, three documented spatiotemporal data fusion models were applied to Landsat-7 and MODI...
Crop condition and natural vegetation monitoring require high resolution remote sensing imagery in b...
Spatial and temporal data fusion approaches have been developed to fuse reflectance imagery from Lan...
Spatiotemporal fusion of remote sensing data is essential for generating high spatial and temporal r...
Remote sensing provides rich sources of data for the monitoring of land surface dynamics. However, s...
Landsat and MODIS data have been widely utilized in many remote sensing applications, however, the t...
Remote sensing technology plays an important role in monitoring rapid changes of the Earth's surface...
Remotely sensed data, with high spatial and temporal resolutions, can hardly be provided by only one...
We present a new, simple, and efficient approach to fusing MODIS and Landsat images. It is well know...
Studies related to vegetation dynamics in heterogeneous landscapes often require Normalized Differen...
Landsat images have been widely used in support of responsible development of natural resources, dis...
Blending algorithms model land cover change by using highly resolved spatial data from one sensor an...