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Detecting Emergence, Growth, and Senescence of Wetland Vegetation with Polarimetric Synthetic Aperture Radar (SAR) Data

机译:利用极化合成孔径雷达(SAR)数据检测湿地植被的出现,生长和衰老

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Wetlands provide ecosystem goods and services vitally important to humans. Land managers and policymakers working to conserve wetlands require regularly updated information on the statuses of wetlands across the landscape. However, wetlands are challenging to map remotely with high accuracy and consistency. We investigated the use of multitemporal polarimetric synthetic aperture radar (SAR) data acquired with Canada’s Radarsat-2 system to track within-season changes in wetland vegetation and surface water. We speculated, a priori, how temporal and morphological traits of different types of wetland vegetation should respond over a growing season with respect to four energy-scattering mechanisms. We used ground-based monitoring data and other ancillary information to assess the limits and consistency of the SAR data for tracking seasonal changes in wetlands. We found the traits of different types of vertical emergent wetland vegetation were detected well with the SAR data and corresponded with our anticipated backscatter responses. We also found using data from Landsat’s optical/infrared sensors in conjunction with SAR data helped remove confusion of wetland features with upland grasslands. These results suggest SAR data can provide useful monitoring information on the statuses of wetlands over time.
机译:湿地提供对人类至关重要的生态系统产品和服务。致力于保护湿地的土地管理者和政策制定者需要定期更新有关整个景观中湿地状况的信息。然而,湿地以高精度和一致性进行远程地图绘制具有挑战性。我们调查了通过加拿大Radarsat-2系统获取的多时相极化合成孔径雷达(SAR)数据的使用情况,以跟踪湿地植被和地表水的季节内变化。我们先验地推测出,相对于四种能量散射机制,不同类型的湿地植被的时间和形态特征在生长期应如何响应。我们使用了地面监测数据和其他辅助信息来评估SAR数据的极限和一致性,以跟踪湿地的季节性变化。我们发现,利用SAR数据可以很好地检测出不同类型的垂直突生湿地植被的特征,并与我们预期的反向散射响应相对应。我们还发现,结合使用Landsat光学/红外传感器的数据和SAR数据,可以消除湿地特征与高地草原的混淆。这些结果表明,SAR数据可以提供有关湿地状态随时间变化的有用监视信息。

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