Abstract

Accurate and timely collection of urban land use and land cover information is crucial for many aspects of urban development and environment protection. Very high-resolution (VHR) remote sensing images have made it possible to detect and distinguish detailed information on the ground. While abundant texture information and limited spectral channels of VHR images will lead to the increase of intraclass variance and the decrease of the interclass variance. Substantial studies on pixel-based classification algorithms revealed that there were some limitations on land cover information extraction with VHR remote sensing imagery when applying the conventional pixel-based classifiers. Aiming at evaluating the advantages of classifier ensemble strategies and object-based image analysis (OBIA) method for VHR satellite data classification under complex urban area, we present an approach-integrated multiscale segmentation OBIA and a mature classifier ensemble method named random forest. The framework was tested on Chinese GaoFen-1 (GF-1), and GF-2 VHR remotely sensed data over the central business district (CBD) of Zhengzhou metropolitan. Process flow of the proposed framework including data fusion, multiscale image segmentation, best optimal segmentation scale evaluation, multivariance texture feature extraction, random forest ensemble learning classifier construction, accuracy assessment, and time consumption. Advantages of the proposed framework were compared and discussed with several mature state-of-art machine learning algorithms such as the k -nearest neighbor (KNN), support vector machine (SVM), and decision tree classifier (DTC). Experimental results showed that the OA of the proposed method is up to 99.29% and 98.98% for the GF-1 dataset and GF-2 dataset, respectively. And the OA is increased by 26.89%, 11.79%, 11.89%, and 4.26% compared with the traditional machine learning algorithms such as the decision tree classifier (DTC), support vector machine (SVM), k -nearest neighbor (KNN), and random forest (RF) on the test of the GF-1 dataset; OA increased by 32.31%, 13.48%, 9.77%, and 7.72% for the GF-2 dataset. In terms of time consuming, by rough statistic, OBIA-RF spends 223.55 s, SVM spends 403.57 s, KNN spends 86.93 s, and DT spends 0.61 s on average of the GF-1 and GF-2 datasets. Taking the account classification accuracy and running time, the proposed method has good ability of generalization and robustness for complex urban surface classification with high-resolution remotely sensed data.

Highlights

  • IntroductionRecent availability of submeter resolution imagery from advanced satellite sensors, such as WorldView-3 and Chinese GaoFen series, can provide new opportunities for detailed urban land cover mapping at the object level [2]

  • The classification accuracy of remotely sensed data and its sensitivity to classification algorithms have a critical importance for the geospatial community, as classified images provide the base layers for many applications and models [1].Recent availability of submeter resolution imagery from advanced satellite sensors, such as WorldView-3 and Chinese GaoFen series, can provide new opportunities for detailed urban land cover mapping at the object level [2]

  • While our research further demonstrates that among the selected algorithms, object-based image analysis (OBIA) is more suitable for the classifier ensemble method when compared with stand-of-art single classifier, especially for higher spatial resolution satellite data, GF-2 instead of GF-1

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Summary

Introduction

Recent availability of submeter resolution imagery from advanced satellite sensors, such as WorldView-3 and Chinese GaoFen series, can provide new opportunities for detailed urban land cover mapping at the object level [2]. A major challenge in using high spatial resolution for detailed urban mapping comes from the high level of intraclass spectral variability, such as building roof and road, and low level of interclass spectral variability, such as water body and shadow. In this condition, traditional pixel-based classification algorithms such as the maximum likelihood classification (MLC) can make missclass error and generate the salt-and-pepper effect which may reduce classification accuracy for very high-resolution imagery

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