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DATA MINING TECHNIQUES FOR LAND USE LAND COVER CLASSIFICATION USING MULTI-TEMPORAL AWIFS DATA

机译:利用多时间AWIFS数据的土地利用土地覆盖分类数据挖掘技术

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The present study addresses the attempt made to explore the temporal (5-day revisit) and spatial resolution (56m) potential of AWiFS sensor aboard IRS-P6 to generate the land use land cover information using decision tree classification technique using See 5 data mining algorithm. The results obtained after two annual cycles and issues related to digital classification of temporal satellite data were presented and discussed. The temporal datasets were co-registered to sub-pixel accuracy and were atmospherically corrected using modified dark pixel method. Scaled reflectance values were extracted for various classes and rule sets were generated using See-5 data mining algorithm. These rule sets were ported into ERDAS Imagine Knowledge Engineer and the temporal data sets were classified. The results indicate that temporal satellite data at monthly interval found to be suitable to address the seasonal variability in agricultural cropland. The problem with temporal dynamics of cloud cover could be overcome with a little extra care during training site selection. Additional training sites should be defined in cloudy regions keeping its temporal dynamics of the target class in view. Mis-registration among temporal data sets too can influence classification accuracies. Among various land cover classes, classification accuracy is poorer in classes those devoid of vegetal cover. Overall kappa statistic was 0.866 for 2004-05 which was further improved to 0.908 during 2005-06.
机译:本研究解决了探索AWIFS传感器的时间(5天Revisit)和空间分辨率(56米)潜力的尝试,这些研究船舶IRS-P6使用决策树分类技术生成土地使用土地覆盖信息,使用SEE 5数据挖掘算法。提出并讨论了两次年度循环和与数字卫星数据的数字分类相关问题后获得的结果。时间数据集与子像素精度共登记,并使用修改的暗像素方法进行大气校正。为各种类提取缩放的反射率值,并使用SEE-5数据挖掘算法生成规则集。这些规则集移植到Erdas Imagine知识工程师,并且时间数据集被分类。结果表明,每月间隔时的时间卫星数据被发现适合于解决农业农作物的季节变异性。在训练场地选择期间,可以克服云覆盖的时间动态的问题。额外的培训站点应在阴天区域中定义,以保持目标类的时间动态视图。时间数据集之间的错误登记也会影响分类精度。在各种陆地覆盖类中,课程中缺乏植物覆盖的课程较差。 2004 - 05年,2004 - 05年,Kappa统计数为0.866,在2005 - 06年期间进一步改善至0.908。

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