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Random forest classification of salt marsh vegetation habitats using quad-polarimetric airborne SAR, elevation and optical RS data

机译:利用四极化机载SAR,高程和光学RS数据对盐沼植被生境进行随机森林分类

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This research investigated the use of multi-source remote sensing data to map natural coastal salt marsh vegetation habitats. Coastal zones are very dynamic and provide a number of critical ecosystem services, particularly in relation to flood mitigation but they have been found to be difficult to monitor using remotely sensed data. This research analysed combinations of S-band and X-band quad-polarimetric airborne SAR, elevation data and optical remotely sensed imagery. In total 30 variables were analysed. The SAR inputs included backscatter intensity channels and Cloude-Pottier, Freeman-Durden and Van Zyl decomposition SAR descriptors. Classification was carried out using Random Forest classifiers at two thematic resolutions which generated a general mapping of salt marsh vegetation and a high-resolution mapping of thematically detailed salt marsh vegetation habitats. The results indicate that Random Forest models are able to handle multi-source datasets and generate high classification accuracies. Models based on either SAR or optical RS variables alone were found to be less accurate than models that combining variables from multiple sources. The results show that X-band SAR data provided the best information to map vegetation extent and analysis showed that S-band SAR data was better able to differentiate between different vegetation habitats. The methods and analyses suggested in this paper extend previous research into remote monitoring of costal zones and illustrate the opportunities for mapping natural coastal areas afforded through combinations of radar and optical remote sensing data.
机译:这项研究调查了使用多源遥感数据来绘制天然沿海盐沼植被栖息地的地图。沿海地区非常活跃,并提供了许多关键的生态系统服务,特别是在缓解洪灾方面,但已发现很难使用遥感数据进行监测。这项研究分析了S波段和X波段四极化机载SAR,仰角数据和光学遥感影像的组合。总共分析了30个变量。 SAR输入包括反向散射强度通道和Cloude-Pottier,Freeman-Durden和Van Zyl分解SAR描述符。使用随机森林分类器在两个主题分辨率下进行分类,生成了盐沼植被的一般映射和主题详细的盐沼植被生境的高分辨率映射。结果表明,随机森林模型能够处理多源数据集并产生较高的分类精度。发现仅基于SAR或光学RS变量的模型比组合来自多个来源的变量的模型的准确性较低。结果表明,X波段SAR数据可提供最佳的植被分布图信息,分析表明S波段SAR数据能够更好地区分不同的植被生境。本文提出的方法和分析将先前的研究扩展到沿海地区的远程监测,并说明了通过雷达和光学遥感数据的组合来绘制自然沿海地区的地图的机会。

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