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Testing the detection and discrimination potential of the new Landsat 8 satellite data on the challenging water hyacinth (Eichhornia crassipes) in freshwater ecosystems

机译:在淡水生态系统中测试新LANDSAT 8卫星数据的检测和辨别潜力

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Detecting and monitoring the spatial distribution, configuration and propagation rates of aquatic water weeds (i.e. water hyacinth) in freshwater ecosystems, is arguably important to water resources managers, hydrologists and policy makers, for sustainable water resources management and planning purposes. The principal objective of this work was to develop a model that can satisfactorily detect and map the spatial distribution and configuration of water hyacinth (Eichhornia crassipes) in freshwater ecosystems, using both visible, near-infrared and thermal band information derived from the Landsat 8 multispectral sensor. Statistical analysis was done, using two machine learning classification ensembles, which are the Discriminant Analysis (DA) and Partial Least Squares Discriminant Analysis (PLS-DA). Our results have shown that the spatial distribution and configuration of water hyacinth can be accurately detected and mapped with an overall classification accuracy of 95% using Landsat 8 data. The results have further shown that the different growing stages (i.e. young, intermediate and old water hyacinth) could be spectrally detected and mapped, using the new Landsat 8 sensor. In addition, the findings of this study have demonstrated that Landsat 8 bands 5, 6, 7, 8, 10 and 11 are the most influential in detecting and mapping water hyacinth in freshwater ecosystems. Furthermore, allocation of agreement results showed that the DA classification algorithm outperformed PLS-DA in the detection and mapping the distribution and spatial configuration of water hyacinth in freshwater ecosystems. Overall, the derived water hyacinth maps provide critical information required for the development of effective and robust water hyacinth control and eradication programmes. (C) 2017 Elsevier Ltd. All rights reserved.
机译:在淡水生态系统中检测和监测水生水杂草(即水风信子)的空间分布,配置和传播速率,对水资源管理人员,水文学和决策者来说,可以对可持续水资源管理和规划目的来说是重要的。这项工作的主要目标是开发一种模型,可以令人满意地检测和映射淡水生态系统中的水葫芦(Eichhornia Crassipes)的空间分布和配置,使用来自Landsat 8多光谱的可见,近红外和热带信息传感器。使用两种机器学习分类集合来完成统计分析,这是判别分析(DA)和偏最小二乘判别分析(PLS-DA)。我们的研究结果表明,使用Landsat 8数据可以精确地检测和映射水风信花的空间分布和配置,并使用Landsat 8数据的整体分类精度映射。结果进一步示出了可以使用新的Landsat 8传感器频谱检测和映射不同的生长阶段(即年轻,中间和旧水风信用)。此外,本研究的结果表明,Landsat 8带5,6,7,8,10和11是淡水生态系统中的检测和绘制水葫芦最有影响力。此外,协议结果的分配表明,DA分类算法在淡水生态系统中的检测和绘制水葫芦中的分布和空间配置中表现出PLS-DA。总的来说,衍生的水风信花图提供了有效和强大的水风信子控制和根除程序所需的关键信息。 (c)2017 Elsevier Ltd.保留所有权利。

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