Evaluation of Radarsat-2 quad-pol SAR time-series images for monitoring groundwater irrigation
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Soumya Bandyopadhyay | Samuel Corgne | Shiv Mohan | Laurence Hubert-Moy | Amit Kumar Sharma | Sriramulu Buvaneshwari | Muddu Sekhar | Laurent Ruiz | L. Hubert‐Moy | S. Corgne | S. Mohan | A. Sharma | L. Ruiz | M. Sekhar | S. Bandyopadhyay | S. Buvaneshwari
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