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Falagas et al., 2019 - Google Patents

A cotton yield estimation model based on agrometeorological and high resolution remote sensing data

Falagas et al., 2019

Document ID
10133811175621707636
Author
Falagas A
Karantzalos K
Publication year
Publication venue
Precision agriculture’19

External Links

Snippet

In this paper, a cotton yield forecasting model based on agrometeorological and high resolution Sentinel-2 (10 m pixel size) satellite data is proposed. In particular, the WOFOST crop growth and yield simulation model was employed only during the training process …
Continue reading at www.wageningenacademic.com (other versions)

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