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1 to 4 of 4 Results
7 août 2022
Valentin Sarah; De Waele Valérie; Vilain Aline; Arsevska Elena; Lancelot Renaud; Roche Mathieu, 2019, "Annotation of epidemiological information in animal disease-related news articles: guidelines and manually labelled corpus", https://doi.org/10.18167/DVN1/YGAKNB, CIRAD Dataverse, V3, UNF:6:H+qzG30RSQ4fWYYA2UBwEQ== [fileUNF]
This dataset contains two files: (i) An annotated corpus ("epi_info_corpus‧xlsx") containing 486 manually annotated sentences extracted from 32 animal disease-related news articles. These news articles were obtained from the database of an event-based biosurveillance system dedic...
20 déc. 2019
Lebourgeois, Valentine; Dupuy, Stéphane; Vintrou, Élodie; Ameline, Maël; Butler, Suzanne; Bégué, Agnès, 2019, "Antsirabe, Madagascar - 2015, land cover map", https://doi.org/10.18167/DVN1/8T3UJE, CIRAD Dataverse, V2
This work was conducted before the launch of ESA Sentinel-2 mission, which images are particularly adapted to crop monitoring and characterization thanks to their high spatial (10 – 60m) and temporal (5 days) resolutions. We worked with Landsat-8 and Spot5 images to create a time...
7 nov. 2019
Dupuy, Stéphane; Gaetano, Raffaele, 2019, "Reunion island - 2018, Land cover map (Pleiades) - 0.5m", https://doi.org/10.18167/DVN1/WKAJZO, CIRAD Dataverse, V1
CIRAD's TETIS research unit is developing an automated mapping method based on the Moringa chain that minimizes interactions with users by automating most image analysis and processing. The methodology uses jointly a Very High Spatial Resolution image (Spot6/7 or Pleiades) and on...
23 avr. 2019
Baron, Christian, 2019, "SARRA-H Modèle de culture : Système d'Analyse Régionale des Risques Agroclimatologiques Version H", https://doi.org/10.18167/DVN1/JSAHFB, CIRAD Dataverse, V1
SARRA-H est une évolution forte de la suite du logiciel SARRA qui est un bilan hydrique dynamique simple utilisé pour estimer l’impact d’un scénario climatique sur une culture annuelle. SARRA-H est spécifiquement adapté à l'analyse d'impact du climat sur la croissance des céréale...
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