Cereal Crops Soil Parameters Retrieval Using L-Band ALOS-2 and C-Band Sentinel-1 Sensors
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Mehrez Zribi | Nicolas Baghdadi | Safa Bousbih | Zohra Lili-Chabaane | Emna Ayari | Zeineb Kassouk | N. Baghdadi | M. Zribi | E. Ayari | Z. Lili-Chabaane | Safa Bousbih | Z. Kassouk | S. Bousbih
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