In recent years, the quick upgrading and improvement of SAR sensors provide beneficial complements for the traditional optical remote sensing in the aspects of theory, technology and data. In this paper, Sentinel-1A SAR data and GF-1 optical data were selected for image fusion, and more emphases were put on the dryland crop classification under a complex crop planting structure, regarding corn and cotton as the research objects. Considering the differences among various data fusion methods, the principal component analysis (PCA), Gram-Schmidt (GS), Brovey and wavelet transform (WT) methods were compared with each other, and the GS and Brovey methods were proved to be more applicable in the study area. Then, the classification was conducted ...
Cloudy conditions impede and reduce the utility of optical imagery. With the launch of Sentinel-1A a...
Timely availability of crop acreage estimation is crucial for maintaining economic and ecological su...
Image fusion techniques of remote sensing data are formal frameworks for merging and using images or...
Corn is an important food crop worldwide, and its yield is directly related to Chinese food security...
With the increasing of satellite sensors, more available multi-source data can be used for large-sca...
Crop discrimination and acreage play a vital role in interpreting the cropping pattern, statistics o...
Reliable early-season crop classification provides necessary input for storage planning, logistics o...
Methods based on Sentinel-1 data were developed to monitor crops and fields to facilitate the distri...
A crop classification method using satellite data is proposed as an alternative to the existing grou...
The timely and accurate acquisition of winter wheat acreage is crucial for food security. This study...
This paper proposes a gradient-based data fusion and classification approach for Synthetic Aperture ...
Combining optical and synthetic aperture radar (SAR) data for crop mapping has become a crucial way ...
This paper evaluates different optical and synthetic aperture radar (SAR) image fusion methods appli...
Nowadays, Synthetic Aperture Radar has become the most widely used radar system, since SAR images ar...
Cloudy conditions reduce the utility of optical imagery for crop monitoring. New constellations of s...
Cloudy conditions impede and reduce the utility of optical imagery. With the launch of Sentinel-1A a...
Timely availability of crop acreage estimation is crucial for maintaining economic and ecological su...
Image fusion techniques of remote sensing data are formal frameworks for merging and using images or...
Corn is an important food crop worldwide, and its yield is directly related to Chinese food security...
With the increasing of satellite sensors, more available multi-source data can be used for large-sca...
Crop discrimination and acreage play a vital role in interpreting the cropping pattern, statistics o...
Reliable early-season crop classification provides necessary input for storage planning, logistics o...
Methods based on Sentinel-1 data were developed to monitor crops and fields to facilitate the distri...
A crop classification method using satellite data is proposed as an alternative to the existing grou...
The timely and accurate acquisition of winter wheat acreage is crucial for food security. This study...
This paper proposes a gradient-based data fusion and classification approach for Synthetic Aperture ...
Combining optical and synthetic aperture radar (SAR) data for crop mapping has become a crucial way ...
This paper evaluates different optical and synthetic aperture radar (SAR) image fusion methods appli...
Nowadays, Synthetic Aperture Radar has become the most widely used radar system, since SAR images ar...
Cloudy conditions reduce the utility of optical imagery for crop monitoring. New constellations of s...
Cloudy conditions impede and reduce the utility of optical imagery. With the launch of Sentinel-1A a...
Timely availability of crop acreage estimation is crucial for maintaining economic and ecological su...
Image fusion techniques of remote sensing data are formal frameworks for merging and using images or...