Abstract

The three-dimensional (3D) information of buildings can describe the horizontal and vertical development of a city. The GaoFen-7 (GF-7) stereo-mapping satellite can provide multi-view and multi-spectral satellite images, which can clearly describe the fine spatial details within urban areas, while the feasibility of extracting building 3D information from GF-7 image remains understudied. This article establishes an automated method for extracting building footprints and height information from GF-7 satellite imagery. First, we propose a multi-stage attention U-Net (MSAU-Net) architecture for building footprint extraction from multi-spectral images. Then, we generate the point cloud from the multi-view image and construct normalized digital surface model (nDSM) to represent the height of off-terrain objects. Finally, the building height is extracted from the nDSM and combined with the results of building footprints to obtain building 3D information. We select Beijing as the study area to test the proposed method, and in order to verify the building extraction ability of MSAU-Net, we choose GF-7 self-annotated building dataset and a public dataset (WuHan University (WHU) Building Dataset) for model testing, while the accuracy is evaluated in detail through comparison with other models. The results are summarized as follows: (1) In terms of building footprint extraction, our method can achieve intersection-over-union indicators of 89.31% and 80.27% for the WHU Dataset and GF-7 self-annotated datasets, respectively; these values are higher than the results of other models. (2) The root mean square between the extracted building height and the reference building height is 5.41 m, and the mean absolute error is 3.39 m. In summary, our method could be useful for accurate and automatic 3D building information extraction from GF-7 satellite images, and have good application potential.

Highlights

  • The structure of urban areas in both two and three dimensions has a significant impact on local and global environments [1]

  • This study chose two filtering methods, cloth simulation filtering (CSF) [34] and morphological filtering [50], for filtering processing, and it was found that cloth simulation filtering can achieve better experimental results for the relatively sparse point cloud generated by satellite images

  • In order to test the feasibility of our building 3D information extraction method, this study verified the accuracy of the building footprint and building height results, respectively

Read more

Summary

Introduction

The structure of urban areas in both two and three dimensions has a significant impact on local and global environments [1]. Liu et al [31] used a random forest method to extract building footprints from ZY-3 multi-spectral satellite images and combined this approach with the digital surface model (DSM) constructed by ZY-3 multi-view images to estimate building heights. There are few studies on the extraction of building information from GF-7 satellite images, and satellite vertical structure extraction capabilities still require evaluation To fill this knowledge gap on urban building 3D information estimation over large areas, we developed a building footprint and height extraction method and assessed the quality of the results from GF-7 imagery. This study verified the accuracy of the building footprint extraction and compared our network with other deep learning methods; we collected actual building height values in the study area as the reference buildings to verify the accuracy of estimated building height information.

Overview
Structure
Channel Attention Block
Training Strategy
Point Cloud Generation
Building Height Extraction
Evaluation Metrics
Performance of Building Footprint Extraction
WHU Building Dataset
Method
GF-7 Self-Annotated Building Dataset
Example
As beenbeen fromfrom
10. Example
Performance of Building Height Extraction
13. Building
Experimental
Conclusions
Full Text
Paper version not known

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

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.