Comparing pixel-based and object-based algorithms for classifying land use of arid basins (Case study: Mokhtaran Basin, Iran)

Desert Pub Date : 2019-06-01 DOI:10.22059/JDESERT.2019.72446
Z. Rafieemajoomard, M. Rahimi, S. Nikoo, H. Memarian, S. Kaboli
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Abstract

In this research, two techniques of pixel-based and object-based image analysis were investigated and compared for providing land use map in arid basin of Mokhtaran, Birjand. Using Landsat satellite imagery in 2015, the classification of land use was performed with three object-based algorithms of supervised fuzzy-maximum likelihood, maximum likelihood, and K-nearest neighbor. Nine combinations were examined in terms of scale level (SL10, SL30, and SL50) and the nearest neighborhood (NN3, NN5, and NN7) in an object-based classification. Ultimately, the validity was evaluated through the usage of two disagreement components including allocation disagreement and quantity disagreement. Results of maximum likelihood classification showed higher overall inaccuracycompared to images categorized based on fuzzy-maximum likelihood and object-based nearest neighbor algorithms. The SL30-NN3 object-based classifier decreased the quantity disagreement by 290% compared to the maximum likelihood and 265% compared to fuzzy-maximum likelihood classifiers. For allocation disagreement, these values were equal to 36% and 19%, respectively. Thus, object-based classification had a better performance in land-use classification of Mokhtaran basin.
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基于像元与基于地物的干旱区土地利用分类算法比较(以伊朗Mokhtaran盆地为例)
在本研究中,研究并比较了基于像素和基于对象的图像分析两种技术,以提供Birjand Mokhtaran干旱盆地的土地利用图。利用2015年的陆地卫星图像,使用监督模糊最大似然、最大似然和K近邻三种基于对象的算法对土地利用进行了分类。在基于对象的分类中,根据量表水平(SL10、SL30和SL50)和最近邻域(NN3、NN5和NN7)检查了九个组合。最后,通过使用两个不一致成分(包括分配不一致和数量不一致)来评估有效性。与基于模糊最大似然和基于对象的最近邻算法分类的图像相比,最大似然分类的结果显示出更高的总体不精确性。与最大似然相比,SL30-NN3基于对象的分类器将数量不一致性降低了290%,与模糊最大似然分类器相比,减少了265%。对于分配不一致,这些值分别等于36%和19%。因此,基于对象的分类在Mokhtaran盆地土地利用分类中具有较好的性能。
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