Monitoring Within-Field Variability of Corn Yield using Sentinel-2 and Machine Learning Techniques
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Francesco Pirotti | Francesco Marinello | Marco Sozzi | Simone Gatto | Ahmed Kayad | F. Pirotti | F. Marinello | A. Kayad | M. Sozzi | Simone Gatto | Ahmed Kayad
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