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首页> 外文期刊>Estuarine Coastal and Shelf Science >Mapping and assessing seagrass along the western coast of Florida using Landsat TM and EO-1 ALI/Hyperion imagery
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Mapping and assessing seagrass along the western coast of Florida using Landsat TM and EO-1 ALI/Hyperion imagery

机译:使用Landsat TM和EO-1 ALI / Hyperion影像对佛罗里达州西海岸的海草进行制图和评估

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摘要

Seagrass habitats provide a variety of ecosystem functions thus monitoring of seagrass habitat is a priority of coastal management. Remote sensing techniques can provide spatial and temporal information about seagrass habitats. Given the availability and accessibility of Landsat-5 Thematic Mapper (TM) and the advanced nature of Earth Observing-1 Advanced Land Imager (ALI) and Hyperion (HYP), we compared the capability of the three 30 m resolution satellite sensors and tested regression models based on two seagrass metrics [percent cover of submerged aquatic vegetation (%SAV) and leaf area index (LAI)] for mapping and assessing seagrass habitats within a shallow coastal area along the central western coast of FL, USA We also evaluated a water depth correction approach to create water depth-invariant bands calculated from the three sensors' data. Then a maximum likelihood classifier was used to classify the %SAV cover into two classification schemes (3-class and 5-class). Based upon the two seagrass metrics measured in the field, six multiple regression models were developed and %SAV and LAI were estimated with spectral variables derived from the three sensors to assess the seagrass habitats in mapped units. Our results indicate that the HYP sensor produced the best seagrass cover maps in the two classification schemes: 3-class [overall accuracy (OA) = 95.9%] and 5-class (OA = 78.4%) and the best % SAV and LAI estimation models [R~2 = 0.78 and 0.59, and cross-validation (CV) = 18.1% and 1.40 for %SAV and LAI, respectively] for assessing seagrass habitats. These results are likely due to the many narrow bands in the visible spectral range and rich subtle spectral information available in the HYP hyperspectral data. ALI outperformed TM (OA = 94.6% vs. 92.5% for the 3-class scheme, and OA = 77.8% vs. 66.0% for the 5-class scheme) for mapping %SAV likely due to its higher radiometric resolution. Our findings also demonstrate that the water depth correction approach was effective in mapping the detailed seagrass habitats with the data from the three sensors. The protocol developed and utilized here represents a new contribution to the existing set of tools used by researchers for documenting the amount of seagrass and which can guide future studies.
机译:海草生境提供了多种生态系统功能,因此监测海草生境是沿海管理的优先事项。遥感技术可以提供有关海草栖息地的时空信息。考虑到Landsat-5专题测绘仪(TM)的可用性和可访问性以及Earth-1先进的陆地成像仪(ALI)和Hyperion(HYP)的先进性,我们比较了三个30 m分辨率卫星传感器的能力并测试了回归基于两个海草指标[淹没水生植物的覆盖率(%SAV)和叶面积指数(LAI)]的模型,用于绘制和评估美国佛罗里达州中西部沿海沿岸浅海地区的海草栖息地深度校正方法可创建根据三个传感器的数据计算得出的水深不变带。然后使用最大似然分类器将%SAV覆盖率分类为两个分类方案(3类和5类)。基于在野外测量的两个海草指标,开发了六个多元回归模型,并使用从三个传感器得出的光谱变量估算%SAV和LAI,以评估制图单位中的海草生境。我们的结果表明,在两种分类方案中,HYP传感器产生了最佳的海草覆盖图:3级[总体准确度(OA)= 95.9%]和5级(OA = 78.4%)以及最佳%SAV和LAI估计评估海草生境的模型[R〜2 = 0.78和0.59,交叉验证(CV)分别为%SAV和LAI的18.1%和1.40]。这些结果可能归因于HYP高光谱数据中可见光谱范围内的许多窄带和丰富的细微光谱信息。在绘制%SAV时,ALI表现优于TM(3类方案的OA = 94.6%,而3类方案的92.5%,OA = 77.8%对66.0%)映射%SAV,这可能是由于其更高的辐射分辨率。我们的发现还表明,利用三个传感器的数据,水深校正方法可有效绘制详细的海草生境图。本文开发和使用的协议代表了对研究人员用于记录海草数量的现有工具集的新贡献,这些工具可以指导未来的研究。

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