Abstract

Uncontrolled and continuous urbanization is an important problem in the metropolitan cities of developing countries. Urbanization progress that occurs due to population expansion and migration results in important changes in the land cover characteristics of a city. These changes mostly affect natural habitats and the ecosystem in a negative manner. Hence, urbanization-related changes should be monitored regularly, and land cover maps should be updated to reflect the current situation. This research presents a comparative evaluation of two classification algorithms, pixel-based support vector machine (SVM) classification and decision-tree-oriented geographic object-based image analysis (GEOBIA) classification, in producing a dynamic land cover map of the Istanbul metropolitan city in Turkey between 2013 and 2017 using Landsat 8 Operational Land Imager (OLI) multi-temporal satellite images. Additionally, the efficiencies of the two data dimension reduction methods are evaluated as part of this research. For dimension reduction, built-up index (BUI) and principal component analysis (PCA) data were calculated for five images during the mentioned period, and the classification algorithms were applied on data stacks for each dimension reduction method. The classification results indicate that the GEOBIA classification of the BUI data set provided the highest accuracy, with a 91.60% overall accuracy and 0.91 kappa value. This combination was followed by the GEOBIA classification of the PCA data set, which highlights the overall efficiency of the GEOBIA over the SVM method. On the other hand, the BUI data set provided more reliable and consistent results for urban expansion classes due to representing physical responses of the surface when compared to the data set of the PCA, which is a spectral transformation method.

Highlights

  • The increase in urbanization and residential areas has been an inevitable process due to economic development and rapid population growth throughout human history [1]

  • When these results are evaluated, it can be seen that the geographic object-based image analysis (GEOBIA) method produced thematically homogenous maps when compared to the support vector machine (SVM) method for both datasets

  • The SVM method especially suffered from the misclassification of uncultivated agricultural lands as built-up areas, which is observable in the western part of the province

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Summary

Introduction

The increase in urbanization and residential areas has been an inevitable process due to economic development and rapid population growth throughout human history [1]. Since the 1990s, there have been significant improvements in accessibility and the spectral and spatial resolutions of remote sensing data. Consistent with these developments, important studies have been carried out to determine the LC status in heterogeneous areas [9,10,11,12]. The proposed methods and analyses vary according to the resolution characteristics of the satellite images and the complexity of the targeted LC classes For this reason, standardized and simplified methods need to be developed to determine the status and changes in LC using remote sensing data in densely populated areas where complex surfaces are present [13]

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