An Accuracy Analysis Comparison of Supervised Classification Methods for Mapping Land Cover Using Sentinel 2 Images in the Al‑Hawizeh Marsh Area, Southern Iraq

N. Aziz, I. Alwan
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引用次数: 13

Abstract

Land cover mapping of marshland areas from satellite images data is not a sim‐ ple process, due to the similarity of the spectral characteristics of the land cov‐ er. This leads to challenges being encountered with some land covers classes, especially in wetlands classes. In this study, satellite images from the Senti‐ nel 2B by ESA (European Space Agency) were used to classify the land cover of Al ‐Hawizeh marsh/Iraq ‐Iran border. Three classification methods were used aimed at comparing their accuracy, using multispectral satellite images with a spatial resolution of 10 m. The classification process was performed using three different algorithms, namely: Maximum Likelihood Classification (MLC), Artificial Neural Networks (ANN), and Support Vector Machine (SVM). The classification algorithms were carried out using ENVI 5.1 software to detect six land cover classes: deep water marsh, shallow water marsh, marsh vegetation (aquatic vegetation), urban area (built ‐up area), agriculture area, and barren soil. The results showed that the MLC method applied to Sentinel 2B imag‐ es provides a higher overall accuracy and the kappa coefficient compared to the ANN and SVM methods. Overall accuracy values for MLC, ANN, and SVM methods were 85.32%, 70.64%, and 77.01% respectively.
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在伊拉克南部Al - Hawizeh沼泽地区使用Sentinel 2图像绘制土地覆盖的监督分类方法的精度分析比较
由于土地覆盖光谱特征的相似性,利用卫星图像数据绘制沼泽地区的土地覆盖地图并不是一个简单的过程。这导致在一些土地覆盖类中遇到挑战,特别是在湿地类中。在这项研究中,利用ESA(欧洲航天局)sentinel - nel 2B卫星图像对Al - Hawizeh沼泽/伊拉克-伊朗边境的土地覆盖进行了分类。利用空间分辨率为10 m的多光谱卫星图像,采用三种分类方法比较其精度。分类过程使用三种不同的算法进行,即:最大似然分类(MLC),人工神经网络(ANN)和支持向量机(SVM)。利用ENVI 5.1软件进行分类算法,对6类土地覆盖进行分类:深水沼泽、浅水沼泽、沼泽植被(水生植被)、城区(建成区)、农业区和贫瘠土壤。结果表明,与人工神经网络和支持向量机方法相比,MLC方法应用于Sentinel 2B图像具有更高的整体精度和kappa系数。MLC、ANN和SVM方法的总体准确率分别为85.32%、70.64%和77.01%。
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来源期刊
Geomatics and Environmental Engineering
Geomatics and Environmental Engineering Earth and Planetary Sciences-Computers in Earth Sciences
CiteScore
2.30
自引率
0.00%
发文量
27
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