eprintid: 10183512 rev_number: 13 eprint_status: archive userid: 699 dir: disk0/10/18/35/12 datestamp: 2024-02-26 14:16:22 lastmod: 2024-02-26 14:16:22 status_changed: 2024-02-26 14:16:22 type: report metadata_visibility: show sword_depositor: 699 creators_name: Data Study Group Team, title: Data Study Group Final Report: Ordnance Survey Northern Ireland (OSNI): Leveraging LiDAR and Street View data for road feature detection with OSNI ispublished: pub divisions: UCL divisions: B03 divisions: C03 divisions: F26 keywords: Data Study Group; The Alan Turing Institute; Leeds Institute for Data Analytics note: Creative Commons Attribution 4.0 International (CC BY 4.0) Licence (https://creativecommons.org/licenses/by/4.0/). abstract: The Ordnance Survey of Northern Ireland (OSNI) mission is to provide high quality geospatial data. Historically this has been for 2D mapping, but modern survey techniques and increasing user requirements have shifted focus toward 3D data. Since 2019, OSNI has operated a vehicle mounted Mobile Mapping System (Leica Pegasus:Two Ultimate Mobile Mapping System) across Northern Ireland capturing 3D Point Cloud data and spherical street view imagery. The range of potential applications is significant, including urban planning, asset identification and management, automating identification of road sign changes for navigation and transport network datasets, identifying feature locations such as scenic views, drainage, potholes and road surface quality, street furniture maintenance, 5G network planning and managing autonomous vehicles. While availability and accessibility of this kind of raw data is improving, there are significant technical challenges in deriving insights from the richness of this dataset. To address these challenges this project seeks to explore the potential of OSNI’s highly detailed Light Detection and Ranging (LiDAR) and imagery data via Machine Learning (ML) and data science methods, with a focus on developing pipelines to visualise, classify and identify road features like drainage which could potentially help various government authorities better monitor road infrastructure. There are many other potential applications for the sort of data OSNI collects, and we hope some of the pipelines and visualisations explored below can aid broader applicability. Below are the results from each of the streams of work conducted. date: 2022-04-27 date_type: published publisher: Zenodo official_url: https://doi.org/10.5281/zenodo.6498764 oa_status: green full_text_type: pub language: eng primo: open primo_central: open_green commissioning_body: The Alan Turing Institute verified: verified_manual elements_id: 2116611 doi: 10.5281/zenodo.6498764 confidential: false lyricists_name: Law, Wai Pan Stephen lyricists_id: SLAWX14 actors_name: Law, Wai Pan Stephen actors_id: SLAWX14 actors_role: owner full_text_status: public place_of_pub: Genève, Switzerland pages: 77 citation: Data Study Group Team; (2022) Data Study Group Final Report: Ordnance Survey Northern Ireland (OSNI): Leveraging LiDAR and Street View data for road feature detection with OSNI. Zenodo: Genève, Switzerland. Green open access document_url: https://discovery.ucl.ac.uk/id/eprint/10183512/1/the_alan_turing_institute_data_study_group_summary_-_osni.pdf