A platform for research: civil engineering, architecture and urbanism
Quantifying impacts on remote photogrammetric inspection using unmanned aerial vehicles
Highlights Laboratory trials of an autonomous photogrammetric inspection UAV are conducted. We investigate benefits of adaptive path correction using a miniature laser scanner. Negative aerial platform effects were quantified in terms of reconstruction accuracy. Minimum mean deviation between the UAV and ground truth model is below 0.25 mm. Laser-adaptive flight paths maintain the standoff and reduce errors by a factor of 2.7.
Abstract Remote photogrammetric inspection is a Non-Destructive Testing method used to quantify surface integrity and detect external discontinuities. The mobility and size of an unmanned aerial vehicle (UAV) offer the flexibility to quickly deploy remote photogrammetric inspections for large-scale assets. In this paper, the results of a photogrammetric inspection are presented as a 3D profile, reconstructed from UAV captured images. Experiments were conducted indoors using a wind turbine blade section obtained from a recently decommissioned asset. The naturally occurring surface features representative of environmental wear were augmented with a small number of artificial features to aid in the visualisation of inspection quality. An autonomous UAV system for photogrammetric inspections is demonstrated and the influence of image parameters such as environmental light levels, motion blur and focal blur quantified in terms of their impact on the inspection accuracy. Over the range of parameter values studied, the poorest scenario was observed to cause a degradation in reconstruction error by a factor of 13 versus the optimal. Reconstruction quality when employing a laser range scanner to maintain standoff distance relative to the object during flight was also investigated. In this schema, the controller automatically generated a real-time adaptive flight path to follow the outer profile of the wind turbine blade and, consequently, demonstrated improved image quality during close-range inspection of an object with complex geometry. Inspection accuracy was quantified using the error of the photogrammetric reconstruction as compared to a model acquired using independent metrology equipment. While utilising the laser-based adaptive path, error in the reconstructed geometry was reduced by a factor of 2.7 versus a precomputed circular path. In the best case, the mean deviation was below 0.25 mm. Instances of wind turbine blade damage such as edge crushing, surface imperfections, early stage leading edge erosion were clearly observed in the textured 3D reconstruction profiles, indicating the utility of the successful inspection process. The results of this paper evaluate the impact of optical environmental effects on photogrammetric inspection accuracy, offering practical insight towards mitigation of negative effects.
Quantifying impacts on remote photogrammetric inspection using unmanned aerial vehicles
Highlights Laboratory trials of an autonomous photogrammetric inspection UAV are conducted. We investigate benefits of adaptive path correction using a miniature laser scanner. Negative aerial platform effects were quantified in terms of reconstruction accuracy. Minimum mean deviation between the UAV and ground truth model is below 0.25 mm. Laser-adaptive flight paths maintain the standoff and reduce errors by a factor of 2.7.
Abstract Remote photogrammetric inspection is a Non-Destructive Testing method used to quantify surface integrity and detect external discontinuities. The mobility and size of an unmanned aerial vehicle (UAV) offer the flexibility to quickly deploy remote photogrammetric inspections for large-scale assets. In this paper, the results of a photogrammetric inspection are presented as a 3D profile, reconstructed from UAV captured images. Experiments were conducted indoors using a wind turbine blade section obtained from a recently decommissioned asset. The naturally occurring surface features representative of environmental wear were augmented with a small number of artificial features to aid in the visualisation of inspection quality. An autonomous UAV system for photogrammetric inspections is demonstrated and the influence of image parameters such as environmental light levels, motion blur and focal blur quantified in terms of their impact on the inspection accuracy. Over the range of parameter values studied, the poorest scenario was observed to cause a degradation in reconstruction error by a factor of 13 versus the optimal. Reconstruction quality when employing a laser range scanner to maintain standoff distance relative to the object during flight was also investigated. In this schema, the controller automatically generated a real-time adaptive flight path to follow the outer profile of the wind turbine blade and, consequently, demonstrated improved image quality during close-range inspection of an object with complex geometry. Inspection accuracy was quantified using the error of the photogrammetric reconstruction as compared to a model acquired using independent metrology equipment. While utilising the laser-based adaptive path, error in the reconstructed geometry was reduced by a factor of 2.7 versus a precomputed circular path. In the best case, the mean deviation was below 0.25 mm. Instances of wind turbine blade damage such as edge crushing, surface imperfections, early stage leading edge erosion were clearly observed in the textured 3D reconstruction profiles, indicating the utility of the successful inspection process. The results of this paper evaluate the impact of optical environmental effects on photogrammetric inspection accuracy, offering practical insight towards mitigation of negative effects.
Quantifying impacts on remote photogrammetric inspection using unmanned aerial vehicles
Zhang, Dayi (author) / Watson, Robert (author) / Dobie, Gordon (author) / MacLeod, Charles (author) / Khan, Aamir (author) / Pierce, Gareth (author)
Engineering Structures ; 209
2019-11-13
Article (Journal)
Electronic Resource
English
Assessing the Accuracy of Unmanned Aerial Vehicles Photogrammetric Survey
Taylor & Francis Verlag | 2021
|High-Rise Building Inspection by Using Unmanned Aerial Vehicles
Trans Tech Publications | 2023
|Remote Inspection and Monitoring of Civil Engineering Structures Based on Unmanned Aerial Vehicles
Springer Verlag | 2023
|Pavement Inspection in Transport Infrastructures Using Unmanned Aerial Vehicles (UAVs)
DOAJ | 2024
|