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Multi-temporal classification of TerraSAR-X data for wetland vegetation mapping

机译:湿地植被映射的Terrasar-X数据的多时间分类

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This paper is concerned with vegetation wetland mapping using multi-temporal SAR imagery. Whilst wetlands play a key role in controlling flooding and nonpoint source pollution, sequestering carbon and providing an abundance of ecological services, knowledge of the flora and fauna of these environments is patchy, and understanding of their ecological functioning is still insufficient for a reliable functional assessment on areas larger than a few ha. The aim of this paper is to evaluate multitemporal TerraSAR-X imagery to map precisely the distribution of vegetation formations within wetlands, in determining seasonally flooded areas of wetlands. A series of six dual-polarization TerraSAR-X images (HH/VV) were acquired in 2012 during dry and wet seasons. Polarimetric and intensity parameters, which present a temporal variation that depends on wetland flooding status and vegetation roughness, were firstly extracted. The parameters were then classified based on Support Vector Machines (SVM) techniques using a specific kernel adapted to the comparison of time-series data. The results show that the Shannon entropy parameter allows discriminating vegetation formations within wetland with more accuracy than intensity parameters.
机译:本文涉及使用多时间SAR图像的植被湿地映射。虽然湿地在控制洪水和非点源污染方面发挥关键作用,但汇价碳并提供了丰富的生态服务,这些环境的植物群和动物群的知识是拼写的,并且对其生态功能的理解仍然不足以获得可靠的功能评估在大于几只公顷的区域。本文的目的是评估湿地内植被形成的植被形成的分布,从而评估多立体交通器X图像,以确定湿地季节性淹水区域。在干燥和潮湿的季节,2012年在2012年获得了一系列六种双极化Terrasar-X图像(HH / VV)。偏振和强度参数提取了依赖于湿地泛滥状态和植被粗糙度的时间变化。然后基于支持向量机(SVM)技术基于使用适应时间序列数据的比较的特定内核来分类参数。结果表明,Shannon熵参数允许在湿地内鉴别植被形成,比强度参数更精确。

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