Abstract

Today, mobile laser scanning and oblique photogrammetry are two standard urban remote sensing acquisition methods, and the cross-source point-cloud data obtained using these methods have significant differences and complementarity. Accurate co-registration can make up for the limitations of a single data source, but many existing registration methods face critical challenges. Therefore, in this paper, we propose a systematic incremental registration method that can successfully register MLS and photogrammetric point clouds in the presence of a large number of missing data, large variations in point density, and scale differences. The robustness of this method is due to its elimination of noise in the extracted linear features and its 2D incremental registration strategy. There are three main contributions of our work: (1) the development of an end-to-end automatic cross-source point-cloud registration method; (2) a way to effectively extract the linear feature and restore the scale; and (3) an incremental registration strategy that simplifies the complex registration process. The experimental results show that this method can successfully achieve cross-source data registration, while other methods have difficulty obtaining satisfactory registration results efficiently. Moreover, this method can be extended to more point-cloud sources.

Highlights

  • Mobile laser scanning (MLS) and oblique photogrammetry are two standard urban remote sensing acquisition methods used today

  • With the development of dense matching algorithms, oblique photogrammetry as a passive remote sensing method can provide a large number of photogrammetric point clouds with rich textures and perfect scene coverage [2]; these features give the method great application potential [3]

  • To address the complex challenges of cross-source point-cloud registration, we propose an incremental registration strategy that considers the geometry of the main body

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Summary

Introduction

Mobile laser scanning (MLS) and oblique photogrammetry are two standard urban remote sensing acquisition methods used today. Active laser scanning usually has high accuracy and can efficiently obtain dense 3D point clouds on both sides of urban roads [1], which has important applications in three-dimensional (3D) model reconstruction, urban growth, and other fields. With the development of dense matching algorithms, oblique photogrammetry as a passive remote sensing method can provide a large number of photogrammetric point clouds with rich textures and perfect scene coverage [2]; these features give the method great application potential [3]. The precise co-registration of the cross-source point clouds can provide a basis for obtaining a complete description of the scene, engaging in 3D model reconstruction, changing monitoring, and other important tasks [8]

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