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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Automatic classification of water-leaving radiance anomalies fromglobal SeaWiFS imagery: Application to the detection of phytoplankton groups in open ocean waters
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Automatic classification of water-leaving radiance anomalies fromglobal SeaWiFS imagery: Application to the detection of phytoplankton groups in open ocean waters

机译:来自全球SeaWiFS影像的离水辐射率异常的自动分类:在开放海水中检测浮游植物群的应用

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摘要

Remote sensing of ocean color is a powerful tool for monitoring phytoplankton in the ocean with a high spatial and temporal resolution. Several methods were developed in the past years for detecting phytoplankton functional types from satellite observations. In this paper, we present an automatic classification method based on a neural network clustering algorithm in order to classify the anomalies of water leaving radiance spectra (Ra), introduced in the PHYSAT method by Alvain et al. (2005), and analyze their variability at the global scale. The use of an unsupervised classification aims at improving the characterization of the spectral variability of Ra in terms of shape and amplitude aswell as the expansion of its potential use to larger in situ datasets for global phytoplankton remote sensing. The Self-OrganizingMap algorithm(SOM, Kohonen, 1984) aggregates similar spectra into a reduced set of pertinent groups, allowing the characterization of the Ra variability, which is known to be linked with phytoplankton community composition (Alvain et al., 2012). Based on the same sample of Ra spectra, a comparison between the previous version of PHYSAT (Alvain et al., 2005, 2008) and the new one using SOM shows that it is now possible to take into consideration all the types of spectra. Thiswas not possible with the previous approach, based on thresholds, defined in order to avoid overlaps between the spectral signatures of each phytoplankton group. The SOM-based method is relevant for characterizing a wide variety of Ra spectra through its ability to handle large amounts of data, in addition to its statistical reliability and processing speed compared to the previous PHYSAT. The former approach might have introduced potential biases and thus, its extension to larger databases was very restricted. This is not the case with the new statistical design presented in this work. In the second step, some new Ra spectra have been related to phytoplankton groups using collocated field pigment inventories froma large in situ database. Phytoplankton groups were identified based on biomarker pigment ratio thresholds taken from the literature. SOM was then applied to the global daily SeaWiFS (Sea-viewing Wide Field-of-view Sensor) imagery archive between 1997 and 2010. Global distributions of major phytoplankton groups were analyzed and validated against in situ data. Thanks to its ability to capture a wide range of spectra and to manage a larger in situ pigment dataset, the neural network tool allows to classify a much higher number of pixels (2 timesmore) than the previous PHYSATmethod for the five phytoplankton groups taken into account in this study (Synechococcus-like-cyanobacteria, diatoms, Prochlorococcus, Nanoeucaryotes and Phaeocystis-like). In addition, different Ra spectral signatures have been associated to diatoms. These signatures are located in various environments where the inherent optical properties affecting the Ra spectra are likely to be significantly different. Local phenomena such as diatom blooms in the upwelling regions or during climatic events (i.e. La Ni?a) are more clearly visible with the new method.
机译:海洋颜色的遥感是一种以高时空分辨率监测海洋浮游植物的有力工具。过去几年中,已经开发了几种从卫星观测中检测浮游植物功能类型的方法。在本文中,我们提出了一种基于神经网络聚类算法的自动分类方法,以对遗留辐射光谱(Ra)的异常进行分类,这是Alvain等人在PHYSAT方法中引入的。 (2005),并分析其在全球范围内的可变性。无监督分类的用途旨在改善Ra的形状和振幅方面的光谱变异性特征,以及将其潜在用途扩展到更大的全球浮游植物遥感原位数据集的能力。自组织映射算法(SOM,Kohonen,1984)将相似的光谱聚集到一组减少的相关组中,从而可以表征Ra变异性,这与浮游植物群落组成有关(Alvain等人,2012)。基于相同的Ra光谱样本,将PHYSAT的先前版本(Alvain等人,2005,2008)与使用SOM的新版本进行比较表明,现在可以考虑所有光谱类型。为了避免每个浮游植物群的光谱特征之间的重叠,使用基于阈值的先前方法是不可能的。与以前的PHYSAT相比,基于SOM的方法除了具有统计可靠性和处理速度外,还具有处理大量数据的能力,因此可用于表征多种Ra光谱。前一种方法可能会引入潜在的偏差,因此,将其扩展到较大的数据库受到很大限制。这项工作中介绍的新统计设计并非如此。第二步,使用来自大型原位数据库的并置田间色素清单,一些新的Ra光谱与浮游植物群相关。根据从文献中获得的生物标志物色素比率阈值,确定了浮游植物群。然后将SOM应用于1997年至2010年之间的全球每日日常SeaWiFS(海景宽视场传感器)图像档案。对主要浮游植物群的全球分布进行了分析,并根据原位数据进行了验证。由于具有捕获大范围光谱和管理更大的原位色素数据集的能力,对于五个浮游植物组,神经网络工具可以对比以前的PHYSAT方法分类的像素数量高得多(多2倍)在这项研究中(类球藻蓝藻,硅藻,原球菌,纳米真核生物和类囊藻)。另外,不同的Ra光谱特征与硅藻有关。这些标记位于各种环境中,其中影响Ra光谱的固有光学性质可能会显着不同。用这种新方法可以更清楚地看到上升流区域或气候事件期间的局部现象,例如硅藻绽放。

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