Model-Based Multitemporal SAR RGB Products for Land and Water Management

In this paper, we present an innovative framework for RGB composition of multitemporal SAR data. The proposed products improve users’ experience with data enhancing interpretability and allowing for information extraction using simple techniques. The characteristics of the RGB products are illustrated through examples in which their suitability with several applications is highlighted.

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