Prospects of Consumer-Grade UAVs for Overpass Bridges Pier Pads Alignment
Abstract
:1. Introduction
- How to extract the construction geometrical features of the pier pads from the UAV data?
- Does the quality of results from consumer-grade UAV data fit the required engineering quality standards of the inspection?
- What will be achieved by using UAVs for the inspection in terms of time, cost, and safety?
2. Inspection Standards and Tolerances
- The first level for the overall tolerance of the whole structure.
- The second level for the positional tolerance of the structure elements.
- The third level for the dimensional tolerance of the individual elements.
- The fourth level for the positional tolerance inside the individual elements, e.g., reinforcement.
3. Methodologies and Materials
3.1. Flight Plan and Georeferencing Strategy
3.2. Geometrical Features Extraction
- Segmenting the pier cap points out of the site point cloud by using a 3D box with proper dimensions and coordinates as shown in Figure 3.
- Separating the point cloud of each pier using the Connected Component Labelling (CCL) algorithm, as shown in Figure 4.
- Primitive fitting using the Random Sample Consensus (RANSAC) method follows. For the pier pads extraction, sphere primitive is proposed because of the symmetrical shape of the pads. Furthermore, sphere centers and tops are easier to measure and compose in sections. Figure 5 shows an example of the spheres fitting of pier pads by RANSAC.
- The vertices of the created spheres are saved to find the points of highest elevation, which represent the tops of the spheres. The spheres’ tops represent the top centres of pier pads. However, the elevations of these points are inaccurate because the tops of the spheres frequently do not fit very well with the pads’ surface.
- The extracted pad centers are employed as polylines for the created profile and cross-sections, as shown in Figure 6. Vertices of these sections are also saved to find intersecting points between sections. These points represent the required 3D coordinates of the pier pad centers.
4. Experimental Tests
4.1. First Experiment–Simulated Project
- A total of 80% forward overlap and 60% side overlap.
- A total of 23 m flying height, 6 m airbase, and 15 m separation between flight lines.
4.2. Second Experiment-Real Project
- ➢
- A total of 75% forward overlap and 68% side overlap.
- ➢
- A 30 m flying height, 6 m airbase, and 16 m separation between flight lines.
5. Discussion
5.1. Accuracy
5.2. Time and Cost
5.3. Safety
6. Conclusions
- The required geometry can be extracted from the point cloud by applying a series of computations using RANSAC and extracting point cloud cross-sections. Through RANSAC sphere fitting, it was possible to determine the centre of pier pads automatically while filtering outliers. Consequently, the proposed technique for geometry extraction offered both automation and feasibility in attaining accuracy.
- The results in both experiments of the proposed method are promising and the RMSE of the extracted pier pad points is within the allowable tolerance of the bridge inspection standards. However, the results of about 6% of the individual points were outside of the required accuracy. Hence, the points extraction using the proposed method is expected to be improved when using a better UAV camera such as the DJI Phantom 4 Pro.
- Obviously, the proposed method surpasses the traditional technique in terms of cost, accessibility, portability, safety, and by reducing the fieldwork time. It was found that, by using the proposed method, more than 90% of the fieldwork time is eliminated. Hence, the cost may be reduced and the safety may be improved by a significant percentage.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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No. | The Step | Time-Cost | |
---|---|---|---|
1 | Fieldwork | Flight time | 00 h 30 m 00 s |
2 | UAV data acquisition and point cloud reconstruction | Matching | 00 h 13 m 29 s |
Alignment | 00 h 06 m 42 s | ||
Camera Optimization | 00 h 00 m 05 s | ||
Depth maps generation | 01 h 23 m 00 s | ||
Dense cloud generation | 00 h 07 m 24 s | ||
3 | Post-processing and pad centres extraction | Prepare data (crop, segmentation, and classification) | 00 h 30 m 00 s |
Sectioning | 01 h 40 m 00 s |
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Jaafar, H.A.; Alsadik, B. Prospects of Consumer-Grade UAVs for Overpass Bridges Pier Pads Alignment. Remote Sens. 2023, 15, 877. https://doi.org/10.3390/rs15040877
Jaafar HA, Alsadik B. Prospects of Consumer-Grade UAVs for Overpass Bridges Pier Pads Alignment. Remote Sensing. 2023; 15(4):877. https://doi.org/10.3390/rs15040877
Chicago/Turabian StyleJaafar, Hasan Abdulhussein, and Bashar Alsadik. 2023. "Prospects of Consumer-Grade UAVs for Overpass Bridges Pier Pads Alignment" Remote Sensing 15, no. 4: 877. https://doi.org/10.3390/rs15040877
APA StyleJaafar, H. A., & Alsadik, B. (2023). Prospects of Consumer-Grade UAVs for Overpass Bridges Pier Pads Alignment. Remote Sensing, 15(4), 877. https://doi.org/10.3390/rs15040877