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Estimating chlorophyll a concentrations from remote-sensing reflectance in optically shallow waters

机译:从光学浅水区的遥感反射率估算叶绿素a浓度

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摘要

A multi-spectral classification and quantification technique is developed for estimating chlorophyll a concentrations, Chi, in shallow oceanic waters where light reflected by the bottom can contribute significantly to the above-water remote-sensing reflectance spectra, R, A Classification criteria for determining bottom reflectance contributions for shipboard R,().) data from the west Florida shelf and Bahamian waters (1998-2001; n=451) were established using the relationship between R-rs(412)/R-rs(670) and the spectral curvature about 555 run, [R,(412)*R-rs(670)]/R-rs(555)(2). Chlorophyll concentrations for data classified as "optically deep" and "optically shallow" were derived separately using best-fit cubic polynomial functions developed from the band-ratios R-rs(490)/R-rs(555) and R-rs(412)/R-rs(670), respectively. Concentrations for transitional data were calculated from weighted averages of the two derived values. The root-mean-square error (RMSE(log)10) calculated for the entire data set using the new technique was 14% lower than the lowest error derived using the best individual band-ratio. The standard blue-to-green, band-ratio algorithm yields a 26% higher RMSE(log)10 than that calculated using the new method. This study demonstrates the potential of quantifying chlorophyll a concentrations more accurately from multi-spectral satellite ocean color data in oceanic regions containing optically shallow waters. (c) 2006 Elsevier Inc. All rights reserved.
机译:开发了一种多光谱分类和定量技术,用于估算浅海海水中的叶绿素a浓度Chi,其中底部反射的光可以显着地影响水上遥感反射光谱R,这是确定底部的分类标准。利用R-rs(412)/ R-rs(670)与光谱之间的关系,确定了佛罗里达西陆架和巴哈马水域(1998-2001; n = 451)对船上R,()。数据的反射贡献。 [R,(412)* R-rs(670)] / R-rs(555)(2)的曲率。使用从带比R-rs(490)/ R-rs(555)和R-rs(412)开发的最佳拟合三次多项式函数分别导出了数据的叶绿素浓度,这些数据分别分类为“光学深层”和“光学浅层” )/ R-rs(670)。根据两个派生值的加权平均值计算过渡数据的浓度。使用新技术为整个数据集计算出的均方根误差(RMSE(log)10)比使用最佳单个谱带比得出的最低误差低14%。标准的蓝到绿带比率算法比使用新方法计算出的RMSE(log)10高26%。这项研究表明,从含有浅水的海洋地区的多光谱卫星海洋颜色数据中,更准确地定量叶绿素a浓度的潜力。 (c)2006 Elsevier Inc.保留所有权利。

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