Abdul Athick A S Mohammed, Shankar K
Department of Geomatics Engineering, School of Civil Engineering and Architecture, Adama Science & Technology University, Ethiopia.
Department of Applied Geology, School of Applied Natural Science, Adama Science & Technology University, Ethiopia.
Data Brief. 2019 Mar 28;24:103880. doi: 10.1016/j.dib.2019.103880. eCollection 2019 Jun.
Land use and land cover changes are often referred for the anthropogenic modification of Earth's surface. The extents of land use and land cover (LULC) changes in Adama Wereda at three different periods (2002, 2010, and 2017) were generated using data from various Landsat sensors namely ETM+, TM and OLI TIRS. This work focused on a change detection analysis using post classification comparison (PCC) and change detection matrix (CDM). These images were geometrically corrected and image processing operations for instance: radiometric correction, using spectral radiance model was carried out, followed by land cover categorisation into water bodies, built up, bare land, sparse vegetation and dense vegetation employing Knowledge, pixel and indices based classification in ERDAS imagine software. The generated data of both change detection techniques from 2002 to 2017 revealed interesting aspect that build up, dense vegetation and sparse vegetation increased in area of approximately 160%, 30% and 78% respectively at the expense of barren land which decreased at 8.5%, but there is not much change in the water bodies. It was also noticed that both the algorithms gives similar values but with negligible deviation.
土地利用和土地覆盖变化通常指地球表面的人为改造。利用来自不同陆地卫星传感器(即增强型专题绘图仪(ETM+)、专题绘图仪(TM)和陆地成像仪-热红外传感器(OLI TIRS))的数据,生成了阿达马专区在三个不同时期(2002年、2010年和2017年)的土地利用和土地覆盖(LULC)变化范围。这项工作重点是使用分类后比较(PCC)和变化检测矩阵(CDM)进行变化检测分析。这些图像进行了几何校正,并进行了图像处理操作,例如:使用光谱辐射模型进行辐射校正,随后在ERDAS Imagine软件中采用基于知识、像素和指数的分类方法,将土地覆盖分类为水体、建成区、裸地、稀疏植被和茂密植被。从2002年到2017年这两种变化检测技术生成的数据揭示了一个有趣的情况,即建成区、茂密植被和稀疏植被的面积分别增加了约160%、30%和78%,而裸地面积减少了8.5%,但水体变化不大。还注意到两种算法给出的值相似,但偏差可忽略不计。