Abstract

In unmanned aerial vehicle (UAV) photogrammetric surveys, the cameracan be pre-calibrated or can be calibrated "on-the-job" using structure-from-motion anda self-calibrating bundle adjustment. This study investigates the impact on mapping accuracyof UAV photogrammetric survey blocks, the bundle adjustment and the 3D reconstructionprocess under a range of typical operating scenarios for centimetre-scale natural landformmapping (in this case, a coastal cliff). We demonstrate the sensitivity of the process tocalibration procedures and the need for careful accuracy assessment. For this investigation, vertical (nadir or near-nadir) and oblique photography were collected with 80%–90%overlap and with accurately-surveyed (σ ≤ 2 mm) and densely-distributed ground control.This allowed various scenarios to be tested and the impact on mapping accuracy to beassessed. This paper presents the results of that investigation and provides guidelines thatwill assist with operational decisions regarding camera calibration and ground control forUAV photogrammetry. The results indicate that the use of either a robust pre-calibration ora robust self-calibration results in accurate model creation from vertical-only photography,and additional oblique photography may improve the results. The results indicate thatif a dense array of high accuracy ground control points are deployed and the UAVphotography includes both vertical and oblique images, then either a pre-calibration or anon-the-job self-calibration will yield reliable models (pre-calibration RMSEXY = 7.1 mmand on-the-job self-calibration RMSEXY = 3.2 mm). When oblique photography was Remote Sens. 2015, 7 11934 excluded from the on-the-job self-calibration solution, the accuracy of the model deteriorated(by 3.3 mm horizontally and 4.7 mm vertically). When the accuracy of the ground controlwas then degraded to replicate typical operational practice (σ = 22 mm), the accuracyof the model further deteriorated (e.g., on-the-job self-calibration RMSEXY went from3.2–7.0 mm). Additionally, when the density of the ground control was reduced, the modelaccuracy also further deteriorated (e.g., on-the-job self-calibration RMSEXY went from7.0–7.3 mm). However, our results do indicate that loss of accuracy due to sparse groundcontrol can be mitigated by including oblique imagery.

Highlights

  • The optimal workflow for high accuracy three-dimensional (3D) reconstruction using unmanned aerial vehicles (UAVs) ( known as remotely-piloted aircraft systems (RPAS) or drones) is the underlying motivation for much of the current research surrounding the use of photogrammetric, structure-from-motion (SfM) and multi-view stereopsis (MVS) techniques [1,2,3,4,5,6,7,8,9,10,11] with UAV imagery (UAV-MVS)

  • The on-screen checker board pre-calibration was shown to be the least accurate method, and so, the conclusions here summarise the findings for flown CalibCam pre-calibrations and PhotoScan on-the-job self-calibrations

  • The results indicate that when a dense array of precise ground control and no oblique imagery was employed in the solutions, the differences between a pre-calibration and an on-the-job self-calibration were not substantial (on-the-job self-calibration was marginally more accurate: the horizontal root mean square error (RMSE) differed by ∼2 mm

Read more

Summary

Introduction

The optimal workflow for high accuracy three-dimensional (3D) reconstruction using unmanned aerial vehicles (UAVs) ( known as remotely-piloted aircraft systems (RPAS) or drones) is the underlying motivation for much of the current research surrounding the use of photogrammetric, structure-from-motion (SfM) and multi-view stereopsis (MVS) techniques [1,2,3,4,5,6,7,8,9,10,11] with UAV imagery (UAV-MVS). This study is part of the research focussing on the application of UAV-MVS for mapping natural landform changes [12]. UAV-MVS has the potential to produce high accuracy 3D point clouds and digital surface models (DSMs), provided the workflow used in the data capture and processing is robust. Quantification of positional accuracy is key to detecting and attributing centimetre-scale landform change.

Objectives
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call