首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Application Of Spectral Decomposition Algorithm For Mapping Water Quality In A Turbid Lake (lake Kasumigaura, Japan) From Landsat Tm Data
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Application Of Spectral Decomposition Algorithm For Mapping Water Quality In A Turbid Lake (lake Kasumigaura, Japan) From Landsat Tm Data

机译:光谱分解算法在Landsat Tm资料浊湖(日本霞浦湖)水质图中的应用

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The remote sensing of Case 2 water has been far less successful than that of Case 1 water, due mainly to the complex interactions among optically active substances (e.g., phytoplankton, suspended sediments, colored dissolved organic matter, and water) in the former. To address this problem, we developed a spectral decomposition algorithm (SDA), based on a spectral linear mixture modeling approach. Through a tank experiment, we found that the SDA-based models were superior to conventional empirical models (e.g. using single band, band ratio, or arithmetic calculation of band) for accurate estimates of water quality parameters. In this paper, we develop a method for applying the SDA to Landsat-5 TM data on Lake Kasumigaura, a eutrophic lake in Japan characterized by high concentrations of suspended sediment, for mapping chlorophyll-a (Chl-a) and non-phytoplankton suspended sediment (NPSS) distributions. The results show that the SDA-based estimation model can be obtained by a tank experiment. Moreover, by combining this estimation model with satellite-SRSs (standard reflectance spectra: i.e., spectral end-members) derived from bio-optical modeling, we can directly apply the model to a satellite image. The same SDA-based estimation model for Chl-a concentration was applied to two Landsat-5 TM images, one acquired in April 1994 and the other in February 2006. The average Chl-a estimation error between the two was 9.9%, a result that indicates the potential robustness of the SDA-based estimation model. The average estimation error of NPSS concentration from the 2006 Landsat-5 TM image was 15.9%. The key point for successfully applying the SDA-based estimation model to satellite data is the method used to obtain a suitable satellite-SRS for each end-member.
机译:案例2水的遥感远没有案例1水的成功,这主要是由于前者中光学活性物质(例如浮游植物,悬浮的沉积物,有色溶解的有机物和水)之间的复杂相互作用。为了解决这个问题,我们基于光谱线性混合建模方法开发了光谱分解算法(SDA)。通过水箱实验,我们发现基于SDA的模型在准确估算水质参数方面优于传统的经验模型(例如,使用单频带,频带比率或频带的算术计算)。在本文中,我们开发了一种将SDA应用于日本霞浦湖(一个以高浓度悬浮沉积物为特征的富营养化湖泊)的Landsat-5 TM数据的方法,用于绘制叶绿素-a(Chl-a)和非浮游植物的悬浮图沉积物(NPSS)分布。结果表明,可以通过坦克实验获得基于SDA的估计模型。此外,通过将此估算模型与从生物光学建模中得出的卫星SRS(标准反射光谱:即光谱末端成员)相结合,我们可以将模型直接应用于卫星图像。将相同的基于SDA的Chl-a浓度估算模型应用于两张Landsat-5 TM图像,一张于1994年4月采集,另一张于2006年2月采集。两者之间的平均Chl-a估算误差为9.9%,结果表示基于SDA的估算模型的潜在健壮性。从2006年Landsat-5 TM影像获得的NPSS浓度的平均估计误差为15.9%。成功地将基于SDA的估计模型应用于卫星数据的关键是用于为每个终端成员获得合适的卫星SRS的方法。

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