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An evaluation of remote sensing techniques for enhanced detection of the toxic dinoflagellate, Karenia brevis

机译:评估遥感技术以增强对有毒鞭毛藻(Karenia brevis)的检测

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摘要

Optical techniques were investigated to enhance current bloom detection capabilities in support of an operational system for forecasting harmful Karenia brevis blooms along the west coast of Florida. within the Gulf of Mexico. Algorithms pertaining to backscatter and changes in spectral shape of remote-sensing reflectance were applied to SeaWiFS and MODIS imagery during known K. brevis and non-K. brevis events. A method to remove resuspended chlorophyll in Texas showed limited use when applied to several scenes following tropical storms off the west Florida coast. This analysis suggests that an ensemble image approach, wherein a combination of a chlorophyll anomaly, spectral shape at 490 nm and a backscatter ratio product would provide an improvement in satellite detection of K. brevis blooms. For southwest Florida, the combination of these methods through an ensemble approach may lead to an increase in user accuracy by 30-50%, as a result of correctly identifying non-K. brevis features. Where available, MODIS FLH scenes were analyzed to determine their use in K. brevis detection. However, insufficient imagery was available to make a fair assessment. Similar approaches could be applied to bloom tracking and monitoring in other regions.
机译:对光学技术进行了研究,以增强当前的水华检测能力,以支持用于预测佛罗里达州西海岸有害的短叶卡伦尼亚水华的水运系统。在墨西哥湾内。有关短散射和非K期间,将与反向散射和遥感反射光谱形状变化有关的算法应用于SeaWiFS和MODIS图像。 brevis事件。一种去除德克萨斯州重悬的叶绿素的方法,在佛罗里达州西海岸附近发生热带风暴后应用于数个场景时显示出有限的用途。该分析表明,将叶绿素异常,490 nm的光谱形状和后向散射比乘积相结合的整体图像方法将可改善卫星检测短小K.bloom的能力。对于佛罗里达州西南部地区,由于正确识别了非K值,因此通过集成方法将这些方法结合起来可以使用户准确性提高30-50%。 brevis功能。在可获得的情况下,对MODIS FLH场景进行了分析,以确定它们在短K.brevis检测中的用途。但是,没有足够的图像来进行公平的评估。类似的方法可以应用于其他地区的花朵跟踪和监测。

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