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Mapping vegetation functional types in urban areas with WorldView-2 imagery: Integrating object-based classification with phenology

机译:使用WorldView-2图像映射城市地区的植被功能类型:将基于对象的分类与苯版相结合

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Mapping urban vegetation is a prerequisite to accurately understanding landscape patterns and ecological services provided by urban vegetation. However, the uncertainties in fine-scale vegetation biodiversity mapping still exist in capturing vegetation functional types efficiently at fine scale. To facilitate the application of fine-scale vegetation spatial configuration used for urban landscape planning and ecosystem service valuation, we present an approach integrating object-based classification with vegetation phenology for fine-scale vegetation functional type mapping in compact city of Beijing, China. The phenological information derived from two WorldView-2 imagery scenes, acquired on 14 September 2012 and 26 November 2012, was used to aid in the classification of tree functional types and grass. Then we further compared the approach to that of using only one WorldView imagery. We found WorldView-2 imagery can be successfully applied to map functional types of urban vegetation with its high spatial resolution and relatively high spectral resolution. The application of the vegetation phenology into classification greatly improved the overall accuracy of classification from 82.3% to 91.1%. In particular, the accuracies of vegetation types was improved by from 10% to 13.26%. The approach integrating vegetation phenology with high-resolution remote sensed images provides an efficient tool to incorporate multi-temporal data into fine-scale urban classification.
机译:映射城市植被是准确理解城市植被提供的景观模式和生态服务的先决条件。然而,在精细规模上有效地捕获植被功能类型,仍然存在细尺植被生物多样性测绘中的不确定性。为了便于用于城市景观规划和生态系统服务估值的细尺植被空间配置,我们展示了一种对北京北京紧凑型城市的细尺植被职业型测绘的基于对象的分类。 2012年9月14日和2012年11月26日获取的两个世界观-2图像场景中派生的鉴效信息用于帮助树功能类型和草的分类。然后我们进一步将方法与仅使用一个世界观的图像进行了比较。我们发现WorldView-2图像可以成功地应用于使用其高空间分辨率和相对较高的光谱分辨率地图展开城市植被的功能类型。将植被候选的施用于分类大大提高了82.3%至91.1%的总体准确性。特别是,植被类型的精度从10%提高到13.26%。与高分辨率遥感图像集成植被酚醛化的方法提供了一种有效的工具,可以将多时间数据结合到微尺度城市分类中。

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