COMPARISON OF PIXEL AND OBJECT BASED CLASSIFICATION METHODS ON RAPIDEYE SATELLITE IMAGE

E. E. Tonyaloğlu, Nurdan Erdoğan, Betül Çavdar, Kübra Kurtşan, E. Nurlu
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引用次数: 3

Abstract

Comparison of pixel and object based classification methods on rapideye satellite image, Turkish Journal of Forest Science , ABSTRACT: The aim of this study is to evaluate the classification performances of land use/land cover (LULC) classification methods by comparing the results of pixel and object-based classification approaches on RapidEye satellite image. Pixel-based classification was carried out in ERDAS Imagine 10.4 using the Maximum Likelihood - supervised approach, whilst object-based classification was performed in e-Cognition Developer 64 using the nearest neighbour-supervised classification method. A LULC map of eight classes was created in both methods. While the accuracy for thematic LULC classes varied in both methods, the overall accuracy and kappa values of LULC maps for pixel and object-based classification methods were 58.39%-0.45 and 89.58%-0.86, respectively. Accuracy assessments and comparative results showed that object-based classification gives better results for thematic LULC classes as well as the overall accuracy of LULC maps. Even though pixel-based classification method was good at mapping many thematic classes, there were misclassifications between natural/semi-natural LULC classes. These results can be attributed to parameters set by users, such as the number of control points, etc. However, the capacity of object-based classification method to include auxiliary data (e.g. DEM, NDVI) increases the accuracy of LULC maps with high-resolution satellites.
基于像素和目标的快速卫星图像分类方法比较
摘要:本研究通过比较rapideye卫星图像上基于像元和基于地物的土地利用/土地覆盖(LULC)分类方法的分类效果,评价其分类性能。在ERDAS Imagine 10.4中使用最大似然监督方法进行基于像素的分类,而在e-Cognition Developer 64中使用最近邻监督分类方法进行基于对象的分类。两种方法都创建了一个包含8个类的LULC映射。虽然两种方法对主题LULC分类的准确率不同,但基于像素和基于对象的分类方法的LULC地图的总体准确率和kappa值分别为58.39%-0.45和89.58%-0.86。准确度评估和对比结果表明,基于对象的分类方法在LULC专题分类上取得了更好的结果,同时也提高了LULC地图的整体准确度。尽管基于像素的分类方法可以很好地映射许多主题类,但自然/半自然的LULC类之间存在分类错误。这些结果可以归因于用户设置的参数,如控制点的数量等。然而,基于目标的分类方法包含辅助数据(如DEM、NDVI)的能力提高了高分辨率卫星LULC地图的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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