A model for the seasonal variations of vegetation indices in coarse resolution data and its inversion to extract crop parameters☆
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2023, Information FusionCitation Excerpt :These results motivated the development of a large number of techniques for combining HS images with high spatial resolution (HR) data, acquired by MS and panchromatic (PAN) sensors, thus overcoming the spatial resolution limitation addressing new applications on a global scale that were only locally faced with high spatial resolution airborne-imaging systems. Such applications include high spatial resolution ecosystem monitoring [11], high spatial resolution mapping of minerals [12], urban surface materials [13], detection of soil organic carbon [14], crop parameters extraction [15], among many others. To date, some instances of satellites considering the simultaneous acquisition of HS data with either MS or PAN images are available.
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This work was performed at LERTS under contract with the Joint Research Center of CEC at Ispra, Italy. Action 2 “Pilot Project for Application of Remote Sensing to Agricultural Statistics” was under the responsibility of M. Sharman