Abstract

Building extraction from LiDAR data has been an active research area, but it is difficult to discriminate between buildings and vegetation in complex urban scenes. A building extraction method from LiDAR data based on minimum cut (min-cut) and improved post-processing is proposed. To discriminate building points on the intersecting roof planes from vegetation, a point feature based on the variance of normal vectors estimated via low-rank subspace clustering (LRSC) technique is proposed, and non-ground points are separated into two subsets based on min-cut after filtering. Then, the results of building extraction are refined via improved post-processing using restricted region growing and the constraints of height, the maximum intersection angle and consistency. The maximum intersection angle constraint removes large non-building point clusters with narrow width, such as greenbelt along streets. Contextual information and consistency constraint are both used to eliminate inhomogeneity. Experiments of seven datasets, including five datasets provided by the International Society for Photogrammetry and Remote Sensing (ISPRS), one dataset with high-density point data and one dataset with dense buildings, verify that most buildings, even with curved roofs, are successfully extracted by the proposed method, with over 94.1% completeness and a minimum 89.8% correctness at the per-area level. In addition, the proposed point feature significantly outperforms the comparison alternative and is less sensitive to feature threshold in complex scenes. Hence, the extracted building points can be used in various applications.

Highlights

  • Automatic building extraction from remote sensing data is a prerequisite step for the applications of three-dimensional (3D) building reconstruction, urban planning, disaster assessment, and updating digital maps and geographic information system (GIS) databases [1,2,3,4]

  • (4) Unlike most previous building extraction methods, only two point features are used in the proposed method, which beneficially decreases the computation cost of calculating point features and improves algorithmic efficiency

  • The results were displayed in LiDAR_Suite, an airborne Light Detection and Ranging (LiDAR) data processing software developed by the Research and Development (R&D) group of the authors

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Summary

Introduction

Automatic building extraction from remote sensing data is a prerequisite step for the applications of three-dimensional (3D) building reconstruction, urban planning, disaster assessment, and updating digital maps and geographic information system (GIS) databases [1,2,3,4]. Some methods combine other data sources, such as optical images with spectral and texture information, intensity data, waveform data and GIS data [6,7,8,9] Among these data, the image data is the most commonly used due to its high spatial resolution, color and texture information [6,10]. By combining two-dimensional (2D) information from images and 3D information from LiDAR data, complementary information can be exploited to extract and reconstruct buildings automatically [1,10]. These methods using images unavoidably involve some problems. In some regions, image and LiDAR data are not always both available to data-end users due to various reasons, which limits the practicality of these methods

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