Print Email Facebook Twitter Flight Path Setting and Data Quality Assessments for Unmanned-Aerial-Vehicle-Based Photogrammetric Bridge Deck Documentation Title Flight Path Setting and Data Quality Assessments for Unmanned-Aerial-Vehicle-Based Photogrammetric Bridge Deck Documentation Author Chen, Siyuan (Hunan Institute of Science and Technology; University College Dublin) Zeng, Xiangding (Hunan Institute of Science and Technology) Laefer, Debra F. (University College Dublin; New York University) Truong-Hong, Linh (TU Delft Optical and Laser Remote Sensing) Mangina, Eleni (University College Dublin) Date 2023 Abstract Imagery from Unmanned Aerial Vehicles can be used to generate three-dimensional (3D) point cloud models. However, final data quality is impacted by the flight altitude, camera angle, overlap rate, and data processing strategies. Typically, both overview images and redundant close-range images are collected, which significantly increases the data collection and processing time. To investigate the relationship between input resources and output quality, a suite of seven metrics is proposed including total points, average point density, uniformity, yield rate, coverage, geometry accuracy, and time efficiency. When applied in the field to a full-scale structure, the UAV altitude and camera angle most strongly affected data density and uniformity. A 66% overlapping was needed for successful 3D reconstruction. Conducting multiple flight paths improved local geometric accuracy better than increasing the overlapping rate. The highest coverage was achieved at 77% due to the formation of semi-irregular gridded gaps between point groups as an artefact of the Structure from Motion process. No single set of flight parameters was optimal for every data collection goal. Hence, understanding flight path parameter impacts is crucial to optimal UAV data collection. Subject photogrammetrypoint cloudquality evaluationSFMUAV To reference this document use: http://resolver.tudelft.nl/uuid:1a6c0d9c-0098-4969-9192-579f42e7af2a DOI https://doi.org/10.3390/s23167159 ISSN 1424-8220 Source Sensors, 23 (16) Part of collection Institutional Repository Document type journal article Rights © 2023 Siyuan Chen, Xiangding Zeng, Debra F. Laefer, Linh Truong-Hong, Eleni Mangina Files PDF sensors_23_07159.pdf 10.5 MB Close viewer /islandora/object/uuid:1a6c0d9c-0098-4969-9192-579f42e7af2a/datastream/OBJ/view