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Mapping Aquatic Vegetation in a Tropical Wetland Using High Spatial Resolution Multispectral Satellite Imagery

机译:使用高空间分辨率多光谱卫星图像绘制热带湿地中的水生植被图

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Vegetation plays a key role in the environmental function of wetlands. The Ramsar-listed wetlands of the Magela Creek floodplain in Northern Australia are identified as being at risk from weeds, fire and climate change. In addition, the floodplain is a downstream receiving environment for the Ranger Uranium Mine. Accurate methods for mapping wetland vegetation are required to provide contemporary baselines of annual vegetation dynamics on the floodplain to assist with analysing any potential change during and after minesite rehabilitation. The aim of this study was to develop and test the applicability of geographic object-based image analysis including decision tree classification to classify WorldView-2 imagery and LiDAR-derived ancillary data to map the aquatic vegetation communities of the Magela Creek floodplain. Results of the decision tree classification were compared against a Random Forests classification. The resulting maps showed the 12 major vegetation communities that exist on the Magela Creek floodplain and their distribution for May 2010. The decision tree classification method provided an overall accuracy of 78% which was significantly higher than the overall accuracy of the Random Forests classification (67%). Most of the error in both classifications was associated with confusion between spectrally similar classes dominated by grasses, such as Hymenachne and Pseudoraphis. In addition, the extent of the sedge Eleocharis was under-estimated in both cases. This suggests the method could be useful for mapping wetlands where statistical-based supervised classifications have achieved less than satisfactory results. Based upon the results, the decision tree method will form part of an ongoing operational monitoring program.
机译:植被在湿地的环境功能中起着关键作用。在北澳大利亚,被拉格萨尔(Magsar Creek)洪泛区列为湿地的湿地被确定为受到杂草,火灾和气候变化的威胁。此外,洪泛区是游骑兵铀矿的下游接收环境。需要使用精确的湿地植被测绘方法,为泛滥平原上的年度植被动态提供当代基准,以协助分析矿山复垦期间和之后的任何潜在变化。这项研究的目的是开发和测试基于地理对象的图像分析的适用性,包括决策树分类以对WorldView-2图像和LiDAR派生的辅助数据进行分类,以绘制Magela Creek洪泛区的水生植被群落。将决策树分类的结果与随机森林分类进行比较。生成的地图显示了2010年5月Magela Creek洪泛区上存在的12个主要植被群落及其分布。决策树分类方法的整体准确性为78%,大大高于随机森林分类的​​整体准确性(67 %)。两种分类中的大多数错误都与以草为主的光谱相似类(如鬣狗和假单胞菌)之间的混淆有关。此外,两种情况下莎草沙棘的程度都被低估了。这表明该方法可用于湿地制图,在这些湿地上,基于统计的监督分类取得的结果不尽人意。根据结果​​,决策树方法将构成正在进行的运营监控程序的一部分。

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