Segment-based fusion of multi-sensor multi-scale satellite soil moisture retrievals
@article{Attarzadeh2022SegmentbasedFO, title={Segment-based fusion of multi-sensor multi-scale satellite soil moisture retrievals}, author={Reza Attarzadeh and Hossein Bagheri and Iman Khosravi and Saeid Niazmardi and Davood Akbarid}, journal={Remote Sensing Letters}, year={2022}, volume={13}, pages={1260 - 1270} }
ABSTRACT Synergetic use of sensors for soil moisture retrieval is attracting considerable interest due to the different advantages of different sensors. Active, passive, and optic data integration could be a comprehensive solution for exploiting the advantages of different sensors aimed at preparing soil moisture maps. Typically, pixel-based methods are used for multi-sensor fusion. Since, different applications need different scales of soil moisture maps, pixel-based approaches are limited for…
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