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An adaptive approach to detect high-biomass algal blooms from EO chlorophyll-a data in support of harmful algal bloom monitoring

机译:一种从EO叶绿素a数据检测高生物量藻华的自适应方法,以支持有害藻华监测

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摘要

High-biomass harmful algal blooms can kill farmed fish through toxicity, physical effects or de-oxygenation of the water column. These blooms often form over spatially large areas meaning that Earth observation is well placed to monitor and study them. In this letter, we present a statistical-based background subtraction technique that has been modified to detect high-biomass algal blooms. The method builds upon previous work and uses a statistical framework to combine spatial and temporal information to produce maps of bloom extent. Its statistical nature allows the approach to characterize the region of interest meaning that region-specific tuning is not needed. The accuracy of the approach has been evaluated using Moderate Resolution Imaging Spectroradiometer (MODIS) data and an in situ cell concentration dataset, resulting in a correct classification rate of 68.0% with a false alarm rate of 0.24 (n = 25). The method is then used to study the surface coverage of a large high-biomass harmful algal bloom of Karenia mikimotoi. The approach shows promise for the early warning of spatially large high-biomass algal blooms, providing valuable information to support in situ sampling campaigns.
机译:高生物量有害藻华会通过毒性,物理作用或水柱脱氧而杀死养殖鱼类。这些水华经常在空间较大的区域上形成,这意味着对地球进行观测可以很好地监视和研究它们。在这封信中,我们介绍了一种基于统计的背景扣除技术,该技术已进行了修改以检测高生物量的藻华。该方法以先前的工作为基础,并使用统计框架来组合时空信息以生成开花程度图。它的统计性质允许该方法表征感兴趣的区域,这意味着不需要特定于区域的调整。该方法的准确性已使用中分辨率成像光谱仪(MODIS)数据和原位细胞浓度数据集进行了评估,得出正确的分类率为68.0%,错误警报率为0.24(n = 25)。然后,该方法用于研究mikimotoi的大型高生物量有害藻华的表面覆盖。该方法显示了对空间较大的高生物量藻华的早期预警的希望,可提供宝贵的信息以支持就地采样活动。

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  • 来源
    《Remote sensing letters》 |2012年第2期|p.101-110|共10页
  • 作者单位

    Plymouth Marine Laboratory, Plymouth PL1 3DH,UK;

    The Scottish Association for Marine Science, Scottish Marine Institute, Oban, Argyll PA37 1QA,UK;

    Plymouth Marine Laboratory, Plymouth PL1 3DH,UK;

    The Scottish Association for Marine Science, Scottish Marine Institute, Oban, Argyll PA37 1QA,UK;

    Plymouth Marine Laboratory, Plymouth PL1 3DH,UK;

    Marine Scotland - Science, Aberdeen AB11 9DB,UK;

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