Rice-Yield Prediction with Multi-Temporal Sentinel-2 Data and 3D CNN: A Case Study in Nepal
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Filiberto Pla | Jian Kang | Rubén Fernández-Beltran | Tina Baidar | F. Pla | Jian Kang | T. Baidar | R. Fernández-Beltran
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