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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Remote estimation of chlorophyll a in optically complex waters based on optical classification
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Remote estimation of chlorophyll a in optically complex waters based on optical classification

机译:基于光学分类的光学复杂水中叶绿素a的远程估算

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Accurate assessment of phytoplankton chlorophyll a (Chla) concentration in turbid waters by means of remote sensing is challenging due to optically complexity and significant variability of case 2 waters, especially in inland waters with multiple optical types. In this study, a water optical classification algorithm is developed, and two semi-analytical algorithms (three- and four-band algorithm) for estimating Chla are calibrated and validated using four independent datasets collected from Taihu Lake, Chaohu Lake, and Three Gorges Reservoir. The optical classification algorithm is developed using the dataset collected in Taihu Lake from 2006 to 2009. This dataset is also used to calibrate the three- and four-band Chla estimation algorithms. The optical classification technique uses remote sensing reflectance at three bands: Rrs(G), Rrs(650), and Rrs(NIR), where G indicates the location of reflectance peak in the green region (around 560. nm), and NIR is the location of reflectance peak in the near-infrared region (around 700. nm). Optimal reference wavelengths of the three- and four-band algorithm are located through model tuning and accuracy optimization. The three- and four-band algorithm accuracy is further evaluated using other three independent datasets. The improvement of optical classification in Chla estimation is revealed by comparing the performance of the two algorithms for non-classified and classified waters. Using the slopes of the three reflectance bands, the 138 reflectance spectra samples in the calibration dataset are classified into three classes, each with a specific spectral shape character. The three- and four-band algorithm performs well for both non-classified and classified waters in estimating Chla. For non-classified waters, strong relationships are yielded between measured and predicted Chla, but the performance of the two algorithms is not satisfactory in low Chla conditions, especially for samples with Chla below 30mg m~(-3). For classified waters, the class-specific algorithms perform better than for non-classified waters. Class-specific algorithms reduce considerable mean relative error from algorithms for non-classified waters in Chla predicting. Optical classification makes that there is no need to adjust the optimal position to estimate Chla for other waters using the class-specific algorithms. The findings in this study demonstrate that optical classification can greatly improve the accuracy of Chla estimation in optically complex waters.
机译:由于光学复杂性和案例2水域的明显可变性,尤其是在具有多种光学类型的内陆水域中,通过光学方式对浑浊水中的浮游植物叶绿素a(Chla)浓度进行准确评估是一项挑战。在这项研究中,开发了一种水光学分类算法,并使用从太湖,巢湖和三峡水库收集的四个独立数据集对用于估计Chla的两个半分析算法(三频带和四频带算法)进行了校准和验证。 。光学分类算法是使用2006年至2009年在太湖采集的数据集开发的。该数据集还用于校准三波段和四波段Chla估计算法。光学分类技术使用三个波段的遥感反射率:Rrs(G),Rrs(650)和Rrs(NIR),其中G表示绿色区域(约560. nm)中反射峰的位置,而NIR为在近红外区域(约700. nm)反射峰值的位置。通过模型调整和精度优化来确定三波段和四波段算法的最佳参考波长。使用其他三个独立的数据集进一步评估了三频段和四频段算法的准确性。通过比较两种算法对未分类水和分类水的性能,揭示了Chla估计中光学分类的改进。使用三个反射波段的斜率,将校准数据集中的138个反射光谱样本分为三类,每个类别都有特定的光谱形状特征。在估算Chla时,三频带和四频带算法对未分类水和分类水均表现良好。对于未分类的水,测得的和预测的Chla之间会产生很强的关系,但是这两种算法在低Chla条件下的性能并不令人满意,尤其是对于Chla低于30mg m〜(-3)的样品。对于分类水,特定类算法的性能要优于未分类水。特定类算法比Chla预测中非分类水域的算法减少了可观的平均相对误差。光学分类使得无需使用特定于类的算法来调整最佳位置来估计其他水域的Chla。这项研究中的发现表明,光学分类可以大大提高光学复杂水中Chla估计的准确性。

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