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Vegetation mapping from high-resolution satellite images in the heterogeneous arid environments of Socotra Island (Yemen)

机译:索科特拉岛(也门)异质干旱环境中高分辨率卫星图像的植被映射

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摘要

Socotra Island (Yemen), a global biodiversity hotspot, is characterized by high geomorphological and biological diversity. In this study, we present a high-resolution vegetation map of the island based on combining vegetation analysis and classification with remote sensing. Two different image classification approaches were tested to assess the most accurate one in mapping the vegetation mosaic of Socotra. Spectral signatures of the vegetation classes were obtained through a Gaussian mixture distribution model, and a sequential maximum a posteriori (SMAP) classification was applied to account for the heterogeneity and the complex spatial pattern of the arid vegetation. This approach was compared to the traditional maximum likelihood (ML) classification. Satellite data were represented by a RapidEye image with 5 m pixel resolution and five spectral bands. Classified vegetation releves were used to obtain the training and evaluation sets for the main plant communities. Postclassification sorting was performed to adjust the classification through various rule-based operations. Twentyeight classes were mapped, and SMAP, with an accuracy of 87%, proved to be more effective than ML (accuracy: 66%). The resulting map will represent an important instrument for the elaboration of conservation strategies and the sustainable use of natural resources in the island.
机译:索科特拉岛(也门)是全球生物多样性热点,其地貌和生物多样性高。在这项研究中,我们基于植被分析和分类与遥感相结合,提出了该岛的高分辨率植被图。测试了两种不同的图像分类方法,以评估在绘制索科特拉岛植被镶嵌图时最准确的一种。通过高斯混合分布模型获得了植被类别的光谱特征,并应用了顺序最大后验(SMAP)分类来说明干旱植被的异质性和复杂的空间格局。将该方法与传统的最大似然(ML)分类进行了比较。卫星数据由具有5 m像素分辨率和五个光谱带的RapidEye图像表示。使用分类的植被版本获取主要植物群落的培训和评估集。执行了分类后排序,以通过各种基于规则的操作来调整分类。映射了28个类别,SMAP的准确度为87%,比ML更为有效(准确性:66%)。生成的地图将成为制定保护战略和岛上自然资源可持续利用的重要工具。

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