Abstract

Abstract. Nowadays, the number of connected devices providing unstructured data is rapidly rising. These devices acquire data with a temporal and spatial resolution at an unprecedented level creating an influx of geoinformation which, however, lacks semantic information. Simultaneously, structured datasets like semantic 3D city models are widely available and assure rich semantics and high global accuracy but are represented by rather coarse geometries. While the mentioned downsides curb the usability of these data types for nowadays’ applications, the fusion of both shall maximize their potential. Since testing and developing automated driving functions stands at the forefront of the challenges, we propose a pipeline fusing structured (CityGML and HD Map datasets) and unstructured datasets (MLS point clouds) to maximize their advantages in the automatic 3D road space models reconstruction domain. The pipeline is a parameterized end-to-end solution that integrates segmentation, reconstruction, and modeling tasks while ensuring geometric and semantic validity of models. Firstly, the segmentation of point clouds is supported by the transfer of semantics from a structured to an unstructured dataset. The distinction between horizontal- and vertical-like point cloud subsets enforces a further segmentation or an immediate refinement while only adequately depicted models by point clouds are allowed. Then, based on the classified and filtered point clouds the input 3D model geometries are refined. Building upon the refinement, the semantic enrichment of the 3D models is presented. The deployment of a simulation engine for automated driving research and a city model database tool underlines the versatility of possible application areas.

Highlights

  • Large municipalities around the world develop 3D city models

  • Whereas the geometry refinement refers to a challenge of the resolution increase of existing geometries for application-specific tasks abstracting from defined Level of Detail (LoD) (Groger et al, 2012) while maintaining existing geometric semantics (Xue et al, 2021)

  • This work presented a first implementation of the proposed pipeline concept for automated geometry refinement and semantic enrichment of existing 3D city models using Mobile Laser Scanning (MLS) point clouds

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Summary

INTRODUCTION

Large municipalities around the world develop 3D city models. The wide availability of aerial images, Airborne Laser Scanning (ALS) point clouds, accurate cadastral records, and efficient algorithms leads to the creation of urban 3D models on an unprecedented scale. Whereas the geometry refinement refers to a challenge of the resolution increase of existing geometries for application-specific tasks abstracting from defined LoDs (Groger et al, 2012) while maintaining existing geometric semantics (Xue et al, 2021). Both concepts, are inline with 2.0 and 3.0 versions of CityGML modeling guidelines (Groger et al, 2012; Kutzner et al, 2020). The pivotal strength of the proposed end-to-end pipeline is the integration of solutions from various domains like point cloud semantic segmentation, object reconstruction, and modeling while maintaining the geometric and semantic validity of processed objects. The implementation is partly based on the Master’s Thesis of (Wysocki, 2020)

RELATED WORK
PROPOSED PIPELINE
Segmentation
Surface reconstruction
Semantic enrichment
Datasets
Results evaluation
Possible applications
CONCLUSIONS & OUTLOOK
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