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Comparison of automated and manual landform delineation in semi detailed soil survey procedure

机译:半详细土壤调查程序中自动和手动地形描述的比较

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ASTER DEM data was used to automate landform classification during soil survey in the Varamin area. For comparison, manual landform classification was done in the same area. Study area was located at South of Jajrood river watershed, Southeast of Tehran province (Iran). The main purpose of this study was to compare the effect of automated and manual landform classification methods in semi-detailed soil survey?procedure. Eight geomorphometric parameters were extracted from DEM using the TAS and DiGem software.?The Pearson correlation coefficient?analysis elucidated that, the most effective of parameters were: analytical hill-shade, plan and profile curvature, and slope and divergence-convergence index. In addition to these terrain attributes, principal component analyses (PCA) of primary geomorphometric parameters were produced to increase the quality of classification and to reduce modeled data. First three PCAs cover 97% of variance of the data.?These PCAs and mentioned?terrain?parameters were selected for performing of K-means unsupervised landform classification model. Results indicated?that unsupervised and manual classification can be complemented, such that conflation of the final maps obtained by these methods can produce a more accurate map. Also, the K-means algorithm with correct iterations, tolerance and suitable number of classes can be used for automated landform classification as well. Hybrid?landform classification method is useful for soil survey and soil mapping especially,?in watersheds and natural resource fields.
机译:在Varamin地区的土壤调查过程中,ASTER DEM数据用于自动化地貌分类。为了进行比较,在同一地区进行了人工地貌分类。研究区域位于德黑兰省(伊朗)东南部的杰伊路德河流域南部。这项研究的主要目的是比较自动和手动地形分类方法在半详细土壤调查过程中的效果。利用TAS和DiGem软件从DEM中提取了8个地貌参数。Pearson相关系数分析表明,最有效的参数是:解析山丘阴影,平面和剖面曲率,坡度和散度-收敛指数。除了这些地形属性外,还对主要地貌参数进行了主成分分析(PCA),以提高分类质量并减少建模数据。前三个PCA覆盖了97%的数据方差。选择这些PCA和提到的“地形”参数来执行K均值无监督地貌分类模型。结果表明,可以对无监督分类和人工分类进行补充,以使通过这些方法获得的最终地图的混合可以生成更准确的地图。同样,具有正确迭代,容差和适当类别数量的K-means算法也可以用于自动地貌分类。混合地貌分类方法特别适用于流域和自然资源领域的土壤调查和土壤测绘。

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