Abstract

Abstract. Automatic building detection from High Spatial Resolution (HSR) images is one of the most important issues in Remote Sensing (RS). Due to the limited number of spectral bands in HSR images, using other features will lead to improve accuracy. By adding these features, the presence probability of dependent features will be increased, which leads to accuracy reduction. In addition, some parameters should be determined in Support Vector Machine (SVM) classification. Therefore, it is necessary to simultaneously determine classification parameters and select independent features according to image type. Optimization algorithm is an efficient method to solve this problem. On the other hand, pixel-based classification faces several challenges such as producing salt-paper results and high computational time in high dimensional data. Hence, in this paper, a novel method is proposed to optimize object-based SVM classification by applying continuous Ant Colony Optimization (ACO) algorithm. The advantages of the proposed method are relatively high automation level, independency of image scene and type, post processing reduction for building edge reconstruction and accuracy improvement. The proposed method was evaluated by pixel-based SVM and Random Forest (RF) classification in terms of accuracy. In comparison with optimized pixel-based SVM classification, the results showed that the proposed method improved quality factor and overall accuracy by 17% and 10%, respectively. Also, in the proposed method, Kappa coefficient was improved by 6% rather than RF classification. Time processing of the proposed method was relatively low because of unit of image analysis (image object). These showed the superiority of the proposed method in terms of time and accuracy.

Highlights

  • Building detection by classifying Remote Sensing (RS) images has been attracted many researches’ attention due to its extensive applications (e.g. automation of information extraction (Lari and Ebadi 2007, Hermosilla, Ruiz et al 2011, Li, Wu et al 2013), updating Geographic Information System (GIS) database (Gharibi, Arefi et al 2016),change detection and urban management (Bouziani, Goïta et al 2010, Huang, Zhang et al 2014))

  • It showed that ACOR tries to find the best solution with the lowest cost function or the highest fitness function based on swarm intelligence

  • In comparison with Object-Support Vector Machine (SVM)-15R, the proposed method (Object-SVM-ACOR) improved QP, OA and KC by 20%, 12% and 30%, respectively. These results showed the efficiency of the hybrid optimization in Feature Selection (FS) and model selection (MS) procedure of SVM

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Summary

Introduction

Building detection by classifying Remote Sensing (RS) images has been attracted many researches’ attention due to its extensive applications (e.g. automation of information extraction (Lari and Ebadi 2007, Hermosilla, Ruiz et al 2011, Li, Wu et al 2013), updating Geographic Information System (GIS) database (Gharibi, Arefi et al 2016) ,change detection and urban management (Bouziani, Goïta et al 2010, Huang, Zhang et al 2014)). The development of RS sensors results in obtaining high spatial resolution (HSR) images. For this reason, it is possible to detect many features from these images, so the extracted information from these images are useful in urban management. Despite of the mentioned advantage, pixel-based classification in HSR images has faced many limitations (e.g. producing salt- paper results due to high spectral diversity, high time processing and inability to interpret image due to weakness of pixel information) (Chen, Hay et al 2012). There are two kinds of classification methods in terms of training samples availability (supervised and unsupervised) (Drăguţ, Csillik et al 2014, Chutia, Bhattacharyya et al 2015, Egorov, Hansen et al 2015) and image analysis unit (pixelbased and object-based) (Lillesand, Kiefer et al 2014).

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