Abstract

Urban areas are one of the most important components of human society. Their extents have been continuously growing during the last few decades. Accurate and timely measurements of the extents of urban areas can help in analyzing population densities and urban sprawls and in studying environmental issues related to urbanization. Urban extents detected from remotely sensed data are usually a by-product of land use classification results, and their interpretation requires a full understanding of land cover types. In this study, for the first time, we mapped urban extents in the continental United States using a novel one-class classification method, i.e., positive and unlabeled learning (PUL), with multi-temporal Moderate Resolution Imaging Spectroradiometer (MODIS) data for the year 2010. The Defense Meteorological Satellite Program Operational Linescan System (DMSP-OLS) night stable light data were used to calibrate the urban extents obtained from the one-class classification scheme. Our results demonstrated the effectiveness of the use of the PUL algorithm in mapping large-scale urban areas from coarse remote-sensing images, for the first time. The total accuracy of mapped urban areas was 92.9% and the kappa coefficient was 0.85. The use of DMSP-OLS night stable light data can significantly reduce false detection rates from bare land and cropland far from cities. Compared with traditional supervised classification methods, the one-class classification scheme can greatly reduce the effort involved in collecting training datasets, without losing predictive accuracy.

Highlights

  • Urban areas, which are characterized by high population densities and extensive human features, are important components of human society, and significantly influence the environment [1]

  • 2.18% of the United States (US) is covered by urban areas

  • The 2010 MCD12Q1 land cover product was maintained and released by the NASA EOSDIS Land Processes Distributed Active Archive Center. It has a spatial resolution of 500 m, the urban extent extracted from the land cover map has a total accuracy about 93% [3,8]

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Summary

Introduction

Urban areas, which are characterized by high population densities and extensive human features, are important components of human society, and significantly influence the environment [1]. Accurate and timely mapping of urban areas is critical for monitoring urbanization, to provide answers to the related wide range of environmental research questions [6,7,8]. Remote-sensing techniques can provide up-to-date land surface measurements on a large spatial scale and are widely used to extract urban areas using image classification methods. Several global land cover maps that include the extents of urban areas have been developed using different types of remotely sensed data and classification techniques. The International Geosphere-Biosphere Program, Data and Information Systems (IGBP-DIS) produced a global land cover map with 17 classes from monthly advanced very-high-resolution radiometer (AVHRR) normalized difference vegetation index (NDVI)

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