4.7 Article

Development of Improved Semi-Automated Processing Algorithms for the Creation of Rockfall Databases

Journal

REMOTE SENSING
Volume 13, Issue 8, Pages -

Publisher

MDPI
DOI: 10.3390/rs13081479

Keywords

rockfall; lidar; terrestrial laser scanning; TLS; point clouds; processing

Funding

  1. Colorado Department of Transportation (CDOT)

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This study introduces a workflow for automating the generation of rockfall databases using terrestrial laser scanning, highlighting the importance of adapting commonly used algorithms for rockfall monitoring use cases.
While terrestrial laser scanning and photogrammetry provide high quality point cloud data that can be used for rock slope monitoring, their increased use has overwhelmed current data analysis methodologies. Accordingly, point cloud processing workflows have previously been developed to automate many processes, including point cloud alignment, generation of change maps and clustering. However, for more specialized rock slope analyses (e.g., generating a rockfall database), the creation of more specialized processing routines and algorithms is necessary. More specialized algorithms include the reconstruction of rockfall volumes from clusters and points and automatic classification of those volumes are both processing steps required to automate the generation of a rockfall database. We propose a workflow that can automate all steps of the point cloud processing workflow. In this study, we detail adaptions to commonly used algorithms for rockfall monitoring use cases, such as Multiscale Model to Model Cloud Comparison (M3C2). This workflow details the entire processing pipeline for rockfall database generation using terrestrial laser scanning.

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