Monitoring impacts of soil bund on spatial variation of teff and finger millet yield with Sentinel-2 and spectroradiometric data in Ethiopia
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N. Haregeweyn | A. Tsunekawa | E. Adgo | D. Meshesha | A. Fenta | G. Tiruneh | J. M. Reichert | Kefyialew Tilahun | Temesgen Mulualem Aragie | Nigussie Haregeweyn
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