Abstract

Abstract. The purpose of this paper is the presentation of a novel algorithm for automatic estimation of the exterior orientation parameters of image datasets, which can be applied in the case that the scene depicted in the images has a planar surface (e.g., roof of a building). The algorithm requires the measurement of four coplanar ground control points (GCPs) in only one image. It uses a template matching method combined with a homography-based technique for transfer of the GCPs in another image, along with an incremental photogrammetry-based Structure from Motion (SfM) workflow, coupled with robust iterative bundle adjustment methods that reject any remaining outliers, which have passed through the checks and geometric constraints imposed during the image matching procedure. Its main steps consist of (i) determination of overlapping images without the need for GPS/INS data; (ii) image matching and feature tracking; (iii) estimation of the exterior orientation parameters of a starting image pair; and (iv) photogrammetry-based SfM combined with iterative bundle adjustment methods. A developed software solution implementing the proposed algorithm was tested using a set of UAV oblique images. Several tests were performed for the assessment of the errors and comparisons with well-established commercial software were made, in terms of automation and correctness of the computed exterior orientation parameters. The results show that the estimated orientation parameters via the proposed solution have comparable accuracy with those ones computed through the commercial software using the highest possible accuracy settings; in addition, double manual work was required by the commercial software compared to the proposed solution.

Highlights

  • Advances in photogrammetry and computer vision have led to the development of the Structure from Motion (SfM) approach, which has seen tremendous evolution over the years

  • According to the developed methodology, four coplanar ground control points (GCPs) are measured in img1; the feature point extraction takes place in images that correspond to a resizing factor of 5; and the camera interior orientation is kept fixed, assuming a principal distance equal to the focal length, a principal point located at the image center and zero distortion

  • This paper proposes a methodology for the estimation of the exterior orientation parameters of images using an incremental photogrammetry-based SfM algorithm coupled with robust iterative bundle adjustment techniques

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Summary

Introduction

Advances in photogrammetry and computer vision have led to the development of the Structure from Motion (SfM) approach, which has seen tremendous evolution over the years. SfM refers to the process of estimating the camera poses that correspond to a 2D image sequence and reconstructing the sparse 3D scene geometry. The combination of SfM and Multi-View Stereo (MVS) methods offer an automated workflow for the generation of high-accuracy dense 3D point clouds. A metric reconstruction is obtained either via an auto-calibration procedure or using known calibration data. The final stage of the SfM pipeline is usually a bundle adjustment, that is, a nonlinear optimization in order to refine the camera poses and the 3D coordinates of points. The georeferencing of the derived SfM results is usually accomplished by estimating the 3D similarity transformation between the arbitrary SfM coordinate system and the world reference system using ground control points (GCPs) and/or GPS data (Verykokou et al, 2018)

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