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Assessing the potential of multi-seasonal WorldView-2 imagery for mapping West African agroforestry tree species,
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Discipline: Indisponible
Auteur(s): H. BAZIE
Auteur(s) tagués: BAZIE Hugues Roméo
Renseignée par : BAZIE Hugues Roméo
Résumé

High resolution satellite systems enable efficient and detailed mapping of tree cover, with high potential to support both natural resource monitoring and ecological research. This study investigates the capability of multi-seasonal WorldView-2 imagery to map five dominant tree species at the individual tree crown level in a parkland landscape in central Burkina Faso. The Random Forest algorithm is used for object based tree species classification and for assessing the relative importance of WorldView-2 predictors. The classification accuracies from using wet season, dry season and multi-seasonal datasets are compared to gain insights about the optimal timing for image acquisition. The multi-seasonal dataset produced the most accurate classifications, with an overall accuracy (OA) of 83.4%. For classifications based on single date imagery, the dry season (OA= 78.4%) proved to …

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