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A novel algorithm of cloud detection for water quality studies using 250 m downscaled MODIS imagery

机译:250 m缩小的MODIS影像用于水质研究的云检测新算法

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摘要

This study is part of a project aimed at developing an automated algorithm for algal bloom detection and quantification in inland water bodies using Moderate Resolution Imaging Spectroradiometer (MODIS) imagery. An important step is to adequately detect and exclude clouds and haze because their presence affects chlorophyll-a (chl-a) estimations. Currently available cloud masking products appear to be ineffective in turbid coastal waters. The purpose of this study is to develop a cloud masking algorithm based on a probabilistic algorithm (Linear Discriminant Analysis) and designed for water bodies by using MODIS images downscaled at a 250 m spatial resolution (MODIS-D-250). Confusion matrix shows that the new cloud mask algorithm yields very satisfactory results, enabling water classification for heavy turbid conditions with a mean kappa coefficient (kappa) of 0.993 and a 95% confidence interval ranging from 0.990 to 0.997. The model also shows a very low commission error (sensitive to the presence of haze), which is essential for accurate water quality monitoring, knowing that the presence of clouds/haze/aerosols leads to major issues in the estimation of water quality parameters. The cloud mask model applied on MODIS-D-250 images improves the sensitivity to haze and the classification of turbid waters located at the edge of urban areas better than the operational MODIS products, and it clearly shows an improvement of the spatial resolution (250 m spatial resolution) compared to other cloud mask algorithms (500 m or 1 km spatial resolution), leading to an increase in exploitable data for water quality studies.
机译:这项研究是一个项目的一部分,该项目旨在使用中分辨率成像分光光度计(MODIS)图像开发用于内陆水体中藻华检测和定量的自动化算法。重要的步骤是充分检测和排除云和霾,因为它们的存在会影响叶绿素-a(chl-a)的估计。当前可用的云遮蔽产品在浑浊的沿海水域似乎无效。这项研究的目的是通过使用以250 m空间分辨率缩小的MODIS图像(MODIS-D-250)开发一种基于概率算法(线性判别分析)的云掩蔽算法,并针对水体进行设计。混淆矩阵显示,新的云遮罩算法产生了非常令人满意的结果,使水能够在重混浊条件下进行分类,其平均卡伯系数(kappa)为0.993,95%置信区间为0.990至0.997。该模型还显示出非常低的佣金误差(对霾的存在敏感),这对于精确的水质监测至关重要,因为知道云/霾/气溶胶的存在会导致水质参数估算中的重大问题。在MODIS-D-250图像上应用的云遮罩模型比MODIS产品可操作地更好地提高了对雾霾的敏感度和位于城市边缘的混浊水的分类,并且清楚地表明了空间分辨率(250 m空间分辨率)与其他云遮罩算法(500 m或1 km空间分辨率)相比,导致用于水质研究的可利用数据增加。

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