Abstract

The visual data acquisition from small unmanned aerial vehicles (UAVs) may encounter a situation in which blur appears on the images. Image blurring caused by camera motion during exposure significantly impacts the images interpretation quality and consequently the quality of photogrammetric products. On blurred images, it is difficult to visually locate ground control points, and the number of identified feature points decreases rapidly together with an increasing blur kernel. The nature of blur can be non-uniform, which makes it hard to forecast for traditional deblurring methods. Due to the above, the author of this publication concluded that the neural methods developed in recent years were able to eliminate blur on UAV images with an unpredictable or highly variable blur nature. In this research, a new, rapid method based on generative adversarial networks (GANs) was applied for deblurring. A data set for neural network training was developed based on real aerial images collected over the last few years. More than 20 full sets of photogrammetric products were developed, including point clouds, orthoimages and digital surface models. The sets were generated from both blurred and deblurred images using the presented method. The results presented in the publication show that the method for improving blurred photo quality significantly contributed to an improvement in the general quality of typical photogrammetric products. The geometric accuracy of the products generated from deblurred photos was maintained despite the rising blur kernel. The quality of textures and input photos was increased. This research proves that the developed method based on neural networks can be used for deblur, even in highly blurred images, and it significantly increases the final geometric quality of the photogrammetric products. In practical cases, it will be possible to implement an additional feature in the photogrammetric software, which will eliminate unwanted blur and allow one to use almost all blurred images in the modelling process.

Highlights

  • Unmanned aerial vehicle (UAV) photogrammetry and remote sensing have become very popular in recent years

  • The results presented in the previous section show that the method for improving blurred photo quality significantly contributed to an improvement in the general quality of typical photogrammetric products

  • The model quality can be analyzed in terms of their geometric accuracy and interpretive quality

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Summary

Introduction

Unmanned aerial vehicle (UAV) photogrammetry and remote sensing have become very popular in recent years. UAVs as platforms for support research equipment enable reaching various regions and terrains, often inaccessible to traditional manned solutions. Their trajectory can be remotely controlled by humans or programmed and implemented automatically. The development and operation of commercial unmanned aerial vehicles is rapid and has become very simple owing to their commercialization. Scientists and engineers from all over the world noticed these advantages and widely began using these devices to transport research equipment. As a result, engineering measurements and tests started to be conducted in new places with unprecedented frequency

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