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Automatic neural classification of ocean colour reflectance spectra at the top of the atmosphere with introduction of expert knowledge

机译:借助专家知识,自动对大气层顶部的海洋颜色反射光谱进行神经分类

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摘要

We propose an automatic neural classification method for ocean colour (OC) reflectance measurements taken at the top of the atmosphere (TOA) by satellite-borne sensors. The goal is to identify aerosol types and cloud contaminated pixels. This information is of importance when selecting appropriate atmospheric correction algorithms for retrieving ocean parameters such as phytoplankton concentrations. The methodology is based on the use of Topological Neural network Algorithms (TNA, so-called Kohonen maps). The pixels of the remotely sensed image are characterised by a vector whose components are the spectral TOA measurement and the standard deviation of a small spatial structure. The method is a three-step method. The first step is an unsupervised classification built from a learning data set; it clusters pixel vectors which are similar into a certain number of groups. Each group is characterised by a specific vector, the so-called reference vector (rv), which summarises the information contained in all the pixels belonging to that group. The second step of the method consists of labeling the reference vectors with the help of an expert in ocean optics. The groups are then clustered into classes corresponding to physical characteristics provided by the expert. The third step consists of analyzing full images and classifying them by using the classifier which has been determined during the first two steps. The method was applied to the Cape Verde region, which exhibits important seasonal variability in terms of aerosols, cloud coverage and ocean chlorophyll-a concentration. We processed POLDER data to test the algorithm. We considered four classes: pixels contaminated by clouds; two types of pixels containing mineral dusts; and pixels containing maritime aerosols only. The method was able to take into account the information given by the expert and apply it to unlabeled pixels. This methodology could easily be extended to a larger number of classes, the major problem being to find adequate expertise to label the classes. (C) 2003 Elsevier Inc. All rights reserved. [References: 21]
机译:我们提出了一种自动神经分类方法,用于通过卫星传感器在大气层(TOA)顶部进行海洋颜色(OC)反射率测量。目的是确定气溶胶类型和云污染像素。在选择适当的大气校正算法以检索海洋参数(例如浮游植物浓度)时,此信息非常重要。该方法基于拓扑神经网络算法(TNA,即所谓的Kohonen映射)的使用。遥感图像的像素由一个向量表征,该向量的组成是光谱TOA测量和小的空间结构的标准偏差。该方法是三步法。第一步是根据学习数据集建立无监督分类。它将相似的像素向量聚类到一定数量的组中。每个组的特征在于特定的矢量,即所谓的参考矢量(rv),该矢量汇总了属于该组的所有像素中包含的信息。该方法的第二步包括在海洋光学专家的帮助下标记参考向量。然后将这些组聚类为与专家提供的物理特征相对应的类。第三步包括分析完整图像,并使用在前两个步骤中确定的分类器对它们进行分类。该方法应用于佛得角地区,该地区在气溶胶,云层覆盖和海洋叶绿素a浓度方面表现出重要的季节性变化。我们处理了POLDER数据以测试算法。我们考虑了四类:被云污染的像素;两种含有矿物粉尘的像素;和仅包含海洋气溶胶的像素。该方法能够考虑专家提供的信息,并将其应用于未标记的像素。这种方法可以很容易地扩展到更多的类,主要的问题是找到足够的专业知识来标记类。 (C)2003 Elsevier Inc.保留所有权利。 [参考:21]

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