The Role of Earth Observation in Achieving Sustainable Agricultural Production in Arid and Semi-Arid Regions of the World
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Andrew J. Tatem | Jadunandan Dash | Sarchil Hama Qader | Victor A. Alegana | Peter M. Atkinson | Nabaz R. Khwarahm | A. Tatem | J. Dash | V. Alegana | S. Qader
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