A bi-seasonal classification of woody plant species using Sentinel-2A and SPOT-6 in a localised species-rich savanna environment
收藏Taylor & Francis Group2022-09-16 更新2026-04-16 收录
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https://tandf.figshare.com/articles/dataset/A_bi-seasonal_classification_of_woody_plant_species_using_Sentinel-2A_and_SPOT-6_in_a_localised_species-rich_savanna_environment/14883933/1
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资源简介:
Sustainable management of biodiversity benefit from cost-effective multi-temporal classification schemes afforded by remote sensing techniques. This study compared classification accuracies of woody plant species (<i>n</i> = 27) and three coexisting land cover types using dry and wet seasons data. Random Forest (RF), Support Vector Machine (SVM) and Deep Neural Network (DNN), were applied to Sentinel-2A and SPOT-6 images. The results showed higher overall classification accuracies for wet season data (65%–72%) for both images and classifiers (DNN, RF and SVM), compared to dry season classification (52%–59%). Near infrared region bands, available in both Sentinel-2A and SPOT-6 imagery, produced high performance for both wet (83%) and dry (80%) seasons. Overall, the findings show potential of multispectral remote-sensing for woody plant species diversity in different seasons. Such a study should be extended to higher frequency species diversity classification, to capture dynamics that may manifest at short time intervals of the year.
提供机构:
Fundisi, Emmanuel; Tesfamichael, Solomon G.; Ahmed, Fethi
创建时间:
2021-06-30



