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High-resolution satellite remote sensing of littoral vegetation of Lake Sevan (Armenia) as a basis for monitoring and assessment

机译:塞文湖(亚美尼亚)沿海植被的高分辨率卫星遥感,作为监测和评估的基础

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Physics-based remote sensing in littoral environments for ecological monitoring and assessment is a challenging task that depends on adequate atmospheric conditions during data acquisition, sensor capabilities and correction of signal disturbances associated with water surface and water column. Airborne hyper-spectral scanners offer higher potential than satellite sensors for wetland monitoring and assessment. However, application in remote areas is often limited by national restrictions, time and high costs compared to satellite data. In this study, we tested the potential of the commercial, high-resolution multi-spectral satellite QuickBird for monitoring littoral zones of Lake Sevan (Armenia). We present a classification procedure that uses a physics-based image processing system (MIP) and GIS tools for calculating spatial metrics. We focused on classification of littoral sediment coverage over three consecutive years (2006–2008) to document changes in vegetation structure associated with a rise in water levels. We describe a spectral unmixing algorithm for basic classification and a supervised algorithm for mapping vegetation types. Atmospheric aerosol retrieval, lake-specific parameterisation and validation of classifications were supported by underwater spectral measurements in the respective seasons. Results revealed accurate classification of submersed aquatic vegetation and sediment structures in the littoral zone, documenting spatial vegetation dynamics induced by water level fluctuations and inter-annual variations in phytoplankton blooms. The data prove the cost-effective applicability of satellite remote-sensing approaches for high-resolution mapping in space and time of lake littoral zones playing a major role in lake ecosystem functioning. Such approaches could be used for monitoring wetlands anywhere in the world.
机译:在沿海环境中进行基于物理的遥感以进行生态监测和评估是一项艰巨的任务,它取决于数据采集,传感器功能以及纠正与水面和水柱相关的信号干扰期间的适当大气条件。机载高光谱扫描仪在湿地监测和评估方面比卫星传感器具有更高的潜力。然而,与卫星数据相比,在偏远地区的应用通常受到国家限制,时间和高成本的限制。在这项研究中,我们测试了商业高分辨率高分辨率多光谱卫星QuickBird在监测塞万湖(亚美尼亚)沿岸带的潜力。我们提出了一种分类程序,该程序使用基于物理的图像处理系统(MIP)和GIS工具来计算空间度量。我们重点研究了连续三年(2006-2008年)沿岸沉积物覆盖率的分类,以记录与水位上升相关的植被结构变化。我们描述了用于基本分类的频谱分解算法和用于映射植被类型的监督算法。各个季节的水下光谱测量结果支持了大气气溶胶的获取,特定于湖泊的参数化和分类的验证。结果表明,对沿岸带的水下水生植被和沉积物结构进行了准确分类,记录了水位波动和浮游植物开花的年际变化引起的空间植被动态。数据证明了卫星遥感方法在湖滨带的空间和时间中进行高分辨率制图的成本效益高的适用性,在湖泊生态系统功能中发挥着重要作用。这种方法可用于监测世界任何地方的湿地。

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