Estimating the Leaf Water Status and Grain Yield of Wheat under Different Irrigation Regimes Using Optimized Two- and Three-Band Hyperspectral Indices and Multivariate Regression Models
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Urs Schmidhalter | Salah El-Hendawy | Salah Elsayed | Yaser Hassan Dewir | Osama Elsherbiny | Hazem H. Ibrahim | Mohamed M. Ibrahim | Mohamed Farouk | U. Schmidhalter | S. Elsayed | S. El-Hendawy | M. Ibrahim | O. Elsherbiny | M. Farouk | Y. Dewir | Osama Elsherbiny
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