Abstract

Urban areas are a complex combination of various land-cover types, and show a variety of land-use structures and spatial layouts. Furthermore, the spectral similarity between built-up areas and bare land is a great challenge when using high spatial resolution remote sensing images to map urban areas, especially for images obtained in dry and cold seasons or high-latitude regions. In this study, a new procedure for urban area extraction is presented based on the high-level, regional, and line segment features of high spatial resolution satellite data. The urban morphology is also analyzed. Firstly, the primitive features—the morphological building index (MBI), the normalized difference vegetation index (NDVI), and line segments—are extracted from the original images. Chessboard segmentation is then used to segment the image into the same-size objects. In each object, advanced features are then extracted based on the MBI, the NDVI, and the line segments. Subsequently, object-oriented classification is implemented using the above features to distinguish urban areas from non-urban areas. In general, the boundaries of urban and non-urban areas are not very clear, and each urban area has its own spatial structure characteristic. Hence, in this study, an analysis of the urban morphology is carried out to obtain a clear regional structure, showing the main city, the surrounding new development zones, etc. The experimental results obtained with six WorldView-2 and Gaofen-2 images obtained from different regions and seasons demonstrate that the proposed method outperforms the current state-of-the-art methods.

Highlights

  • Urban areas are the main areas of human activity, and they have a great impact on the Earth’s land-surface change and the ecological environment

  • A new object-oriented approach based on the fusion of regional and line segment features has been proposed for urban area extraction from high spatial resolution remote sensing images, and urban morphology analysis

  • After primitive feature extraction and segmentation, the urban area characteristics are described by the high-level features extracted from the low-level regional and line segment features in the local spatial units

Read more

Summary

Introduction

Urban areas are the main areas of human activity, and they have a great impact on the Earth’s land-surface change and the ecological environment. Remote sensing has been the main approach to efficient urban land-cover mapping. A number of different approaches have been proposed in recent years for automatically detecting urban areas from remotely sensed images [9,10]. Only low or medium spatial resolution images were available to the general public and researchers [11,12]. In these images, the characteristics of urban areas are mainly identified by impervious surfaces [9] or built-up areas [10]. (a) Urban and classification map of test image R2 as the MSPA input (White: foreground; black: background);.

Objectives
Methods
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call