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Knowledge based multi-source, time series classification: A case study of central region of Kenya

机译:基于知识的多源时间序列分类:以肯尼亚中部地区为例

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Land use Land cover (LULC) time series mapping for large areas have greatly benefited from the availability of medium multispectral resolution imagery. While medium and low resolution data is greatly affordable, it presents some challenges during its classification such as defining discrete land cover classes, selecting adequate training areas and the mixed pixels. This research applied knowledge based classification with variables of Principal components, digital elevation model, Normalised Difference Vegetation Index (NDVI) and slope in order to overcome the problems of defining discrete land cover classes and selecting adequate training areas with Landsat imagery. The first three Principal components of data epochs 1995, 2002, and 2010 were investigated through factor loading and histogram density slicing to develop an optimum threshold values to differentiate among the following classes: clear water, turbid water, salty muddy water, rocks, dense forest, light dense forest, grass, bare soils, silts/sand rocks and crop covers. NDVI, Digital Elevation Model (DEM) and slope were also incorporated to differentiate among vegetation covers and map water covers. The overall accuracies obtained were 89.6%, 88.8% and 87.8% and kappa coefficients of 0.88, 0.87 and 0.86 for the years 1995, 2002 and 2010 respectively. The change detection analysis showed competing land uses in forest cover and crop versus grass lands and bare lands. Water cover remained almost unchanged with changes of less than 0.1%. (C) 2015 Elsevier Ltd. All rights reserved.
机译:土地利用大面积的土地覆盖(LULC)时间序列映射已从中等多光谱分辨率图像的可用性中大大受益。虽然中低分辨率数据非常便宜,但在分类过程中却面临一些挑战,例如定义离散的土地覆盖类别,选择适当的训练区域和混合像素。这项研究应用了基于知识的分类方法,包括主成分,数字高程模型,归一化植被指数(NDVI)和坡度的变量,以克服使用Landsat影像定义离散土地覆盖类别和选择合适的训练区域的问题。通过因子加载和直方图密度切片研究了数据时代的前三个主要组成部分,以开发最佳阈值,以区分以下几类:清水,浑浊水,咸水,岩石,茂密森林,茂密的森林,草丛,裸露的土壤,淤泥/砂岩和农作物覆盖物。还结合了NDVI,数字高程模型(DEM)和坡度,以区分植被覆盖和地图水覆盖。 1995年,2002年和2010年获得的总体准确性分别为89.6%,88.8%和87.8%,卡伯系数分别为0.88、0.87和0.86。变化检测分析显示,森林覆盖和农作物的土地利用与草地和裸露土地之间存在竞争。水覆盖率几乎保持不变,变化小于0.1%。 (C)2015 Elsevier Ltd.保留所有权利。

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