Abstract

Recently, the mapping industry has been focusing on the possibility of large-scale mapping from unmanned aerial vehicles (UAVs) owing to advantages such as easy operation and cost reduction. In order to produce large-scale maps from UAV images, it is important to obtain precise orientation parameters as well as analyzing the sharpness of they themselves measured through image analysis. For this, various techniques have been developed and are included in most of the commercial UAV image processing software. For mapping, it is equally important to select images that can cover a region of interest (ROI) with the fewest possible images. Otherwise, to map the ROI, one may have to handle too many images, and commercial software does not provide information needed to select images, nor does it explicitly explain how to select images for mapping. For these reasons, stereo mapping of UAV images in particular is time consuming and costly. In order to solve these problems, this study proposes a method to select images intelligently. We can select a minimum number of image pairs to cover the ROI with the fewest possible images. We can also select optimal image pairs to cover the ROI with the most accurate stereo pairs. We group images by strips and generate the initial image pairs. We then apply an intelligent scheme to iteratively select optimal image pairs from the start to the end of an image strip. According to the results of the experiment, the number of images selected is greatly reduced by applying the proposed optimal image–composition algorithm. The selected image pairs produce a dense 3D point cloud over the ROI without any holes. For stereoscopic plotting, the selected image pairs were map the ROI successfully on a digital photogrammetric workstation (DPW) and a digital map covering the ROI is generated. The proposed method should contribute to time and cost reductions in UAV mapping.

Highlights

  • This study proposes an intelligent algorithm to select a minimum number of image pairs that can cover the region of interest (ROI), or to select a minimum number of the most accurate image pairs to cover the ROI

  • We proposed an intelligent pair-selection algorithm for stereoscopic processing of unmanned aerial vehicles (UAVs) images

  • We checked overlaps between stereo pairs and Y-parallax errors in each stereo pair, and we selected image pairs according to predefined selection criteria

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Summary

Introduction

Unmanned aerial vehicles (UAVs) were initially developed for military uses, such as reconnaissance and surveillance. UAVs usually capture images at higher resolutions than manned aerial vehicles due to their low flight altitudes IOPs are related to imaging sensors mounted on UAVs, such as focal length and lens distortion They can be estimated through camera calibration processes [4,5,6]. Initial EOPs are provided by navigation sensors installed in the UAV. They are refined through bundle adjustment processes [7,8]. We believe there is a strong need for research on how to select optimal UAV images for stereoscopic mapping in particular. The selected image pairs successfully mapped the ROI on a digital photogrammetric workstation (DPW), and a digital map covering the ROI was generated

Proposed Method
Image Grouping
Example
Initial Image Pair Composition
Optimal
Study Area and Data
Performance of Stereoscopic Processing
Conclusions

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