Spatiotemporal data fusion is a key technique for generating unified time-series images from various satellite platforms to support the mapping and monitoring of vegetation. However, the high similarity in the reflectance spectrum of different vegetation types brings an enormous challenge in the similar pixel selection procedure of spatiotemporal data fusion, which may lead to considerable uncertainties in the fusion. Here, we propose an object-based spatiotemporal data-fusion framework to replace the original similar pixel selection procedure with an object-restricted method to address this issue. The proposed framework can be applied to any spatiotemporal data-fusion algorithm based on similar pixels. In this study, we modified the spatia...
Remote sensing provides rich sources of data for the monitoring of land surface dynamics. However, s...
Remotely sensed data, with high spatial and temporal resolutions, can hardly be provided by only one...
Image time series of high temporal and spatial resolution capture land surface dynamics of heterogen...
Spatial and temporal data fusion approaches have been developed to fuse reflectance imagery from Lan...
High spatiotemporal resolution satellite imagery is useful for natural resource management and monit...
Crop condition and natural vegetation monitoring require high resolution remote sensing imagery in b...
High spatiotemporal resolution satellite imagery is useful for natural resource management and monit...
In this study, three documented spatiotemporal data fusion models were applied to Landsat-7 and MODI...
Monitoring the spatio-temporal development of vegetation is a challenging task in heterogeneous and ...
Abstract: High spatiotemporal resolution satellite imagery is useful for natural resource management...
Time series vegetation indices with high spatial resolution and high temporal frequency are importan...
Spatiotemporal fusion of remote sensing data is essential for generating high spatial and temporal r...
The spatiotemporal remote sensing images have significant importance in forest ecological monitoring...
The increasing availability and variety of global satellite products provide a new level of data wit...
Investigating the temporal and spatial pattern of landscape disturbances is an important requirement...
Remote sensing provides rich sources of data for the monitoring of land surface dynamics. However, s...
Remotely sensed data, with high spatial and temporal resolutions, can hardly be provided by only one...
Image time series of high temporal and spatial resolution capture land surface dynamics of heterogen...
Spatial and temporal data fusion approaches have been developed to fuse reflectance imagery from Lan...
High spatiotemporal resolution satellite imagery is useful for natural resource management and monit...
Crop condition and natural vegetation monitoring require high resolution remote sensing imagery in b...
High spatiotemporal resolution satellite imagery is useful for natural resource management and monit...
In this study, three documented spatiotemporal data fusion models were applied to Landsat-7 and MODI...
Monitoring the spatio-temporal development of vegetation is a challenging task in heterogeneous and ...
Abstract: High spatiotemporal resolution satellite imagery is useful for natural resource management...
Time series vegetation indices with high spatial resolution and high temporal frequency are importan...
Spatiotemporal fusion of remote sensing data is essential for generating high spatial and temporal r...
The spatiotemporal remote sensing images have significant importance in forest ecological monitoring...
The increasing availability and variety of global satellite products provide a new level of data wit...
Investigating the temporal and spatial pattern of landscape disturbances is an important requirement...
Remote sensing provides rich sources of data for the monitoring of land surface dynamics. However, s...
Remotely sensed data, with high spatial and temporal resolutions, can hardly be provided by only one...
Image time series of high temporal and spatial resolution capture land surface dynamics of heterogen...