Using optimized three-band spectral indices to assess canopy N uptake in corn and wheat
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Yuncai Hu | Urs Schmidhalter | Salah Elsayed | Fei Li | Dan Li | Fei Li | Yuncai Hu | U. Schmidhalter | S. Elsayed | Dan Li
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