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Intercomparison of candidate methods for mineral dust aerosol classification using MODIS infrared and visible channels

机译:使用MODIS红外和可见通道的矿物粉尘气雾剂分类候选方法的互相

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The Geoinformatics Group at the University of Alabama in Huntsville (UAH) Information Technology and Systems Center (ITSC) conducts a broad range of informatics research including data mining, metadata development, and ontology/semantics modeling. Within the data mining arena, an automated dust storm detection system is under development using ITSC's remote sensing data visualization and analysis tool, ADaM-IVICS. In this study, a reference supervised classification method was used as a baseline for comparison against a threshold based heuristic classifier designed to distinguish clouds from airborne mineral dust in selected Terra MODIS Level 1B imagery. The reference classification method couples an Orthogonal Forward Selection (OFS) optimization algorithm and a Naive Bayes (NB) classifier on training samples to determine the optimal spectral bands. The NB classifier then uses the selected subset of spectral bands to detect dust. The threshold-based classifier used is implemented as a Decision Tree and based on the Integrated Dust Detection (IDD) method. The IDD method calculates D*, a dust index based on infrared bands suitable for both daytime and nighttime dust detection. Incorporating NDVI to improve the demarcation between land and ocean surfaces obscured and un-obscured by dust refined the IDD method. Additional thresholds were derived using combination of both D* and NDVI to improve the classification accuracy. Classification results from the threshold-based algorithm are compared to reference results and are presented in this paper.
机译:亨茨维尔阿拉巴马大学(UAH)信息技术和系统中心(ITSC)的地理信息学集团进行了广泛的信息学研究,包括数据挖掘,元数据开发和本体/语义建模。在数据挖掘竞技场内,利用ITSC的遥感数据可视化和分析工具,ADAM-IVICS正在开发自动化防尘暴检测系统。在该研究中,将参考监督分类方法用作基线,以与基于阈值的启发式分类器进行比较,该分类器旨在区分从所选地区MODIS级别1B图像中的机载矿物粉尘中的云层。参考分类方法耦合在训练样本上的正交前进选择(OFS)优化算法和天真贝叶斯(NB)分类器,以确定最佳光谱频带。然后,NB分类器使用所选择的光谱带子集来检测灰尘。使用的基于阈值的分类器被实现为决策树,并基于集成的灰尘检测(IDD)方法。 IDD方法计算D *,基于适用于白天和夜间灰尘检测的红外条带的灰尘指数。纳入NDVI以改善陆地和海洋表面之间的划分,通过灰尘遮挡和未遮挡的粉尘精制IDD方法。使用D *和NDVI的组合导出额外的阈值,以提高分类精度。将基于阈值的算法的分类结果与参考结果进行比较,并在本文中提出。

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