Phenological analysis of unmanned aerial vehicle based time series of barley imagery with high temporal resolution
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T. Kraska | U. Rascher | A. Burkart | U. Rascher | T. Kraska | A. Burkart | V. L. Hecht | Thorsten Kraska
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