Change Detection Analysis of Land Cover Features using Support Vector Machine Classifier

Saurabh Kumar, Shwetank
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引用次数: 0

Abstract

Remote sensing (RS) is crucial for geographical change studies such as vegetation, forestry, agriculture, urbanization, and other land use/land cover (LU/LC) applications. The RS satellite imagery provides crucial geospatial information for observation and analysis of the entire earth's surface. In the proposed study, Multitemporal and multispectral Landsat satellite imagery is used to feature extraction of LU/LC of the Haridwar region. The preprocessing of used imagery is essential for accurately classify the land cover features using image preprocessing methods (geometric correction, atmospheric correction, and image transform). It helps to classify and change detection of land cover features accurately. After preprocessing of imagery, land cover features are divided into seven feature classes using the region of interest (ROI) tool with google earth image and topographic map. The Support vector machine (SVM) is a supervised learning method used to classify the land cover features of the study area. SVM classifier accurately classifies the imagery of the different years 2017, 2010, 2003, and 1996 with 90.00%, 82.75%, 86.37%, and 83.38% accuracy. The post-classification method is used to detect changes in land cover features. From 1996 to 2017, orchards and vegetation are rapidly decreased by 13,698.36 ha and 1,638.81 ha due to unplanned development in urban and industrial areas of the Haridwar region. The resultant LU/LC change information is important for monitoring and analyzing land cover changes of the study area.    
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基于支持向量机分类器的土地覆盖特征变化检测分析
遥感(RS)在植被、林业、农业、城市化和其他土地利用/土地覆盖(LU/LC)应用等地理变化研究中至关重要。RS卫星图像为整个地球表面的观测和分析提供了重要的地理空间信息。本研究利用多时相多光谱Landsat卫星影像对哈里瓦尔地区LU/LC进行特征提取。利用图像预处理方法(几何校正、大气校正和图像变换)对土地覆盖特征进行准确分类,需要对所用图像进行预处理。它有助于准确地对土地覆盖特征进行分类和变化检测。对影像进行预处理后,利用感兴趣区域(ROI)工具,结合谷歌地球影像和地形图,将地表覆盖特征划分为7个特征类。支持向量机(SVM)是一种用于研究区域土地覆盖特征分类的监督学习方法。SVM分类器对2017年、2010年、2003年和1996年不同年份的图像进行准确分类,准确率分别为90.00%、82.75%、86.37%和83.38%。后分类方法用于检测土地覆盖特征的变化。从1996年到2017年,由于哈里瓦尔地区城市和工业区的无计划发展,果园和植被迅速减少了13698.36公顷和1638.81公顷。所得的LU/LC变化信息对监测和分析研究区土地覆盖变化具有重要意义。
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来源期刊
International Journal of Next-Generation Computing
International Journal of Next-Generation Computing COMPUTER SCIENCE, THEORY & METHODS-
自引率
66.70%
发文量
60
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