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首页> 外文期刊>Remote Sensing >Hyperspectral and Multispectral Retrieval of Suspended Sediment in Shallow Coastal Waters Using Semi-Analytical and Empirical Methods
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Hyperspectral and Multispectral Retrieval of Suspended Sediment in Shallow Coastal Waters Using Semi-Analytical and Empirical Methods

机译:利用半分析和经验方法对浅海近岸悬浮泥沙的高光谱和多光谱反演

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Natural lagoons and estuaries worldwide are experiencing accelerated ecosystem degradation due to increased anthropogenic pressure. As a key driver of coastal zone dynamics, suspended sediment concentration (SSC) is difficult to monitor with adequate spatial and temporal resolutions both in the field and using remote sensing. In particular, the spatial resolutions of currently available remote sensing data generated by satellite sensors designed for ocean color retrieval, such as MODIS (Moderate Resolution Imaging Spectroradiometer) or SeaWiFS (Sea-Viewing Wide Field-of-View Sensor), are too coarse to capture the dimension and geomorphological heterogeneity of most estuaries and lagoons. In the present study, we explore the use of hyperspectral (Hyperion) and multispectral data, i.e., the Landsat TM (Thematic Mapper) and ETM+ (Enhanced Thematic Mapper Plus), ASTER (Advanced Spaceborne Thermal Emission and Reflection Radiometer), and ALOS (Advanced Land Observing Satellite), to estimate SSC through semi-analytical and empirical approaches in the Venice lagoon (Italy). Key parameters of the retrieval models are calibrated and cross-validated by matching the remote sensing estimates of SSC with in situ data from a network of water quality sensors. Our analysis shows that, despite the higher spectral resolution, hyperspectral data provide limited advantages over the use of multispectral data, mainly due to information redundancy and cross-band correlation. Meanwhile, the limited historical archive of hyperspectral data (usually acquired on demand) severely reduces the chance of observing high turbidity events, which are relatively rare but critical in controlling the coastal sediment and geomorphological dynamics. On the contrary, retrievals using available multispectral data can encompass a much wider range of SSC values due to their frequent acquisitions and longer historical archive. For the retrieval methods considered in this study, we find that the semi-analytical method outperforms empirical approaches, when applied to both the hyperspectral and multispectral dataset. Interestingly, the improved performance emerges more clearly when the data used for testing are kept separated from those used in the calibration, suggesting a greater ability of semi-analytical models to “generalize” beyond the specific data set used for model calibration.
机译:由于人为压力的增加,全世界的天然泻湖和河口正在加速生态系统退化。作为沿海地区动力学的主要驱动力,无论是在野外还是在遥感方面,都很难以足够的时空分辨率来监测悬浮沉积物浓度(SSC)。特别是,由设计用于海洋颜色检索的卫星传感器(例如MODIS(中等分辨率成像光谱仪)或SeaWiFS(海景宽视场传感器))生成的当前可用遥感数据的空间分辨率过于粗糙,以至于无法捕获大多数河口和泻湖的尺寸和地貌异质性。在本研究中,我们探索使用高光谱(Hyperion)和多光谱数据,即Landsat TM(专题测绘仪)和ETM +(增强型专题测绘仪Plus),ASTER(先进的星载热发射和反射辐射计)和ALOS(先进的陆地观测卫星),通过威尼斯泻湖(意大利)的半分析和经验方法估算SSC。通过将SSC的遥感估算值与来自水质传感器网络的现场数据进行匹配,可以对检索模型的关键参数进行校准和交叉验证。我们的分析表明,尽管光谱分辨率更高,但高光谱数据相对于多光谱数据的使用却具有有限的优势,这主要是由于信息冗余和跨频相关性。同时,有限的高光谱历史档案(通常是按需获取)严重降低了观测高浊度事件的机会,这种情况相对罕见,但对于控制沿海沉积物和地貌动力学至关重要。相反,由于使用频繁的数据和较长的历史档案,使用可用的多光谱数据进行的检索可以包含更广泛的SSC值。对于本研究中考虑的检索方法,我们发现将半分析方法应用于高光谱和多光谱数据集均优于经验方法。有趣的是,当将用于测试的数据与用于校准的数据分开时,改进后的性能会更加清晰地显示出来,这表明半分析模型具有更大的“概括”能力,超越了用于模型校准的特定数据集。

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