基于GEOBIA和数据驱动方法的阿尔塔穆尔贾国家公园草地生境制图

IF 5.7 Q1 ENVIRONMENTAL SCIENCES
Cristina Tarantino , Marica De Lucia , Luciana Zollo , Mariagiovanna Dell’Aglio , Maria Adamo , Rocco Labadessa
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引用次数: 0

摘要

本研究旨在区分意大利南部Alta Murgia国家公园的半自然干草地栖息地(即:6210,6220,62A0,根据欧洲栖息地指令附件1)。因此,采用多季节高空间分辨率卫星图像和数据驱动的地理目标图像分析(geoobia)方法,通过自动分类过程获得地中海草原生境制图。对支持向量机(SVM)和随机森林(RF)等不同的分类器进行了评估,并通过改变不同的输入特征配置(如使用的季节图像数量)来比较它们的性能。审议了plimiades和Worldview-2卫星图像。采用双重命名法来考虑在野外发生的植被镶嵌和过渡阶段。RF优于SVM。虽然不同生境类别的f1得分不大于0.75,还有待进一步改进,但该结果可以被认为是在小尺度上自动再现Alta Murgia国家公园大面积草地生境破碎化的初步尝试。绘制地图可成为地方当局根据《欧洲生境指令》参与保护区生境定期监测的有用工具,精细比尺可为保护自然生态系统的地方重点决策过程提供支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combination of GEOBIA and data-driven approach for grassland habitat mapping in the Alta Murgia National Park
This study aims to discriminate semi-natural dry grassland habitats (namely: 6210, 6220, 62A0, according to the Annex I of the European Habitat Directive) in the Alta Murgia National Park, in southern Italy. These Mediterranean habitats are often characterized by small and fragmented patches, therefore, multi-season very high spatial resolution satellite images and data-driven Geographic Object-Based Image Analysis (GEOBIA) approach were considered to obtain grassland habitats mapping by an automatic classification process. Different classifiers such as Support Vector Machine (SVM) and Random Forest (RF) were evaluated, and their performance was compared by varying different input feature configurations such as the number of seasonal images used. Pléiades and Worldview-2 satellite images were considered. A dual nomenclature was adopted to consider the set of vegetation mosaics and transitional stages occurring in the field. RF performed better than SVM. Although the F1-scores of the different habitat classes were not greater than 0.75 and further improvements are needed, the results can be considered a satisfying preliminary attempt to automatically reproduce, at fine scale, the fragmentation of grassland habitats on the large area of Alta Murgia National Park. The mapping can be a useful tool for local authorities involved in the periodic monitoring of habitats in protected areas according to the European Habitat Directive and the fine scale can support focused local decision-making process for the conservation of natural ecosystems.
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CiteScore
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