首页> 外文期刊>Iranian Journal of Science and Technology, Transactions of Civil Engineering >Assessment of Spatio-Temporal Changes in Land Use/Land Cover Over a Decade (2000-2014) Using Earth Observation Datasets: A Case Study of Varanasi District, India
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Assessment of Spatio-Temporal Changes in Land Use/Land Cover Over a Decade (2000-2014) Using Earth Observation Datasets: A Case Study of Varanasi District, India

机译:利用地球观测数据集评估十年(2000-2014年)土地利用/土地覆盖的时空变化:以印度瓦拉纳西地区为例

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摘要

Land use/land cover (LULC) changes have emerged as a major concern on global as well as on the local stage because of its considerable impact on climate and environment, especially in rapidly developing areas. Therefore, accurate mapping of LULC and ongoing changes over a time period have drawn a lot of attention in recent years. Remote sensing images from Landsat series satellites are a major information source for LULC change analysis. The present study mainly focuses on the evaluation of three classification techniques, namely maximum likelihood classifier (MLC), artificial neural network (ANN) and support vector machine (SVM) using multi-temporal Landsat images in order to choose the best method among them. The overall analysis based on accuracy measures indicates that the SVM is superior to ANN and MLC. The classification results achieved by the best recognized technique (SVM) were applied to assess the spatio-temporal changes in LULC that occurred in a fast growing Varanasi district of India over a period of 14years (2001-2014). A paired samples t test was also carried out to determine the statistical significance of changes in LULC between different studied time periods. The results reveal the rapid expansion in built-up area resulted in substantial decrease in agricultural land and other LULC classes. This study also highlights the importance of Landsat images to provide accurate and timely LULC maps that can be used as inputs in a number of land management and planning activities.
机译:土地使用/土地覆被(LULC)的变化已成为全球以及地方舞台上的主要关注问题,因为它对气候和环境(尤其是在快速发展的地区)具有相当大的影响。因此,近年来,LULC的精确映射和一段时间内的持续变化引起了很多关注。来自Landsat系列卫星的遥感图像是LULC变化分析的主要信息来源。本研究主要集中在评估三种分类技术上,即最大似然分类器(MLC),人工神经网络(ANN)和支持向量机(SVM),它们使用多时态Landsat图像进行评估,以便从中选择最佳方法。基于准确性测度的整体分析表明,SVM优于ANN和MLC。通过最佳识别技术(SVM)获得的分类结果被用于评估在快速发展的印度瓦拉纳西地区在14年内(2001-2014)发生的LULC时空变化。还进行了配对样本t检验以确定不同研究时间段之间LULC变化的统计显着性。结果表明,建成区的快速扩张导致农田和其他土地利用,土地利用变化和土地类别的大量减少。这项研究还强调了Landsat影像对于提供准确及时的LULC地图的重要性,这些地图可以用作许多土地管理和规划活动的输入。

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