Evaluate the performance of different algorithms of pixel- based classification in providing the landscape map (Case Study: Malekshahicity, Ilam province)

S. Yaghobi, H. Fathizadeh
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Abstract

Evaluate the performance of different algorithms of pixel- based classification in providing the landscape map (Case Study: Malekshahicity, Ilam province) Abstract: Nowadays, technology of remote sensing has allowed users to use this science to consider the changes arising from natural and human factors and to determine the amount of the variation due to its great progress. The researchers use several methods to classify images that each has better accuracy and efficiency compared to each other. The aim of this study is to compare the accuracy of the 9 methods of classification in malekshahi city with an area of 1739 km 2 . For this purpose, there were used the images of ETM + sensor of Landsat satellite in 2014. At first, there were done geometric corrections on the images. And finally, the map of classification of the algorithms of support vector machine, maximum likelihood, minimum distance to mean, multilayer Perceptron artificial Neural Network, Mahalanobis distance, spectral angle map, spectral information divergence, parallel surfaces and binary encoding (codes) were prepared. Results showed that the method of Multilayer Perceptron artificial neural network with back-propagation algorithms could obtainhighest accuracy and efficiency among different methods with Kappa coefficient and overall accuracy equal to 0/94 and 96.5, respectively. Mahalanobis distance method, minimum distance to mean method and support vector machine method were next priorities with overall accuracy equal to 91.35, 90.10 and 84.48. The study of the area of land use also showed that good results can be provided about the area of land use of region using classification method of artificial neural network due to high accuracy. The results can be used to extract land use maps of malekshahi city using Perceptron artificial neural network due to high accuracy. Keywords: Remote sensing, classification, landsat satellite, multilayer neural network, Malekshahi city Received (Gelis):  13.09.2016 -  Revised (Duzeltme):  07.11.2016 - Accepted (Kabul):  11.11.2016 Cite (Atif):  Yaghobi, S., Fathizadeh, H., 2017. Evaluate the performance of different algorithms of pixel- based classification in providing the landscape map (Case Study: Malekshahicity, Ilam province).  Journal of the Faculty of Forestry Istanbul University  67(2): xxx-xxx. DOI: 10.17099/jffiu.xxxxx
评价基于像元的不同分类算法在提供景观地图中的性能(以伊拉姆省Malekshahicity为例)
摘要:随着遥感技术的发展,基于像元的景观分类技术已经可以考虑自然和人为因素引起的变化,并确定变化的大小。研究人员使用了几种方法对图像进行分类,每种方法都具有更好的准确性和效率。本研究的目的是比较9种分类方法在马勒克沙希市1739 km²的分类精度。为此,使用了2014年Landsat卫星ETM +传感器的图像。首先,对图像进行几何校正。最后,编制了支持向量机分类图、最大似然图、最小均值距离图、多层感知器人工神经网络、马氏距离图、光谱角图、光谱信息散度图、平行曲面图和二进制编码算法。结果表明,基于反向传播算法的多层感知器人工神经网络方法在不同方法中获得的准确率和效率最高,Kappa系数和总体准确率分别为0/94和96.5。其次是马氏距离法、最小均值距离法和支持向量机法,总体精度分别为91.35、90.10和84.48。对土地利用面积的研究也表明,基于人工神经网络的区域土地利用面积分类方法具有较高的准确率,可以取得较好的分类效果。该结果具有较高的精度,可用于利用Perceptron人工神经网络提取马雷克沙希市土地利用图。关键词:遥感,分类,陆地卫星,多层神经网络,Malekshahi市接收(Gelis): 13.09.2016 -修订(Duzeltme): 07.11.2016 -接受(Kabul): 11.11.2016引用(Atif): Yaghobi, S., Fathizadeh, H., 2017。评估不同的基于像素的分类算法在提供景观地图中的性能(以伊拉姆省Malekshahicity为例)。伊斯坦布尔大学林业学院学报67(2):xxx-xxx。DOI: 10.17099 / jffiu.xxxxx
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