Comparative analysis of different uni- and multi-variate methods for estimation of vegetation water content using hyper-spectral measurements
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Clement Atzberger | Andrew K. Skidmore | Roshanak Darvishzadeh | Ali A. Matkan | M. Mirzaie | A. Shakiba | A. Skidmore | C. Atzberger | R. Darvishzadeh | A. Matkan | A. Shakiba | M. Mirzaie
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