A Motion Deblurring Network for Enhancing UAV Image Quality in Bridge Inspection

IF 4.4 2区 地球科学 Q1 REMOTE SENSING
Drones Pub Date : 2023-11-02 DOI:10.3390/drones7110657
Jin-Hwan Lee, Gi-Hun Gwon, In-Ho Kim, Hyung-Jo Jung
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引用次数: 0

Abstract

Unmanned aerial vehicles (UAVs) have been increasingly utilized for facility safety inspections due to their superior safety, cost effectiveness, and inspection accuracy compared to traditional manpower-based methods. High-resolution images captured by UAVs directly contribute to identifying and quantifying structural defects on facility exteriors, making image quality a critical factor in achieving accurate results. However, motion blur induced by external factors such as vibration, low light conditions, and wind during UAV operation significantly degrades image quality, leading to inaccurate defect detection and quantification. To address this issue, this research proposes a deblurring network using a Generative Adversarial Network (GAN) to eliminate the motion blur effect in UAV images. The GAN-based motion deblur network represents an image inpainting method that leverages generative models to correct blurry artifacts, thereby generating clear images. Unlike previous studies, this proposed approach incorporates deblur and blur learning modules to realistically generate blur images required for training the generative models. The UAV images processed using the motion deblur network are evaluated using a quality assessment method based on local blur map and other well-known image quality assessment (IQA) metrics. Moreover, in the experiment of crack detection utilizing the object detection system, improved detection results are observed when using enhanced images. Overall, this research contributes to improving the quality and accuracy of facility safety inspections conducted with UAV-based inspections by effectively addressing the challenges associated with motion blur effects in UAV-captured images.
一种提高无人机桥梁检测图像质量的运动去模糊网络
与传统的人工方法相比,无人驾驶飞行器(uav)由于其优越的安全性、成本效益和检查准确性,越来越多地用于设施安全检查。无人机捕获的高分辨率图像直接有助于识别和量化设施外部的结构缺陷,使图像质量成为获得准确结果的关键因素。然而,在无人机操作过程中,由振动、弱光条件和风等外部因素引起的运动模糊会显著降低图像质量,导致缺陷检测和量化不准确。为了解决这一问题,本研究提出了一种使用生成对抗网络(GAN)的去模糊网络来消除无人机图像中的运动模糊效应。基于gan的运动去模糊网络代表了一种利用生成模型来纠正模糊伪影的图像绘制方法,从而生成清晰的图像。与以往的研究不同,该方法结合了去模糊和模糊学习模块,以真实地生成训练生成模型所需的模糊图像。采用基于局部模糊图和其他知名图像质量评价指标的质量评价方法对运动去模糊网络处理后的无人机图像进行评价。此外,在利用目标检测系统进行的裂纹检测实验中,使用增强图像后,检测结果有所改善。总体而言,该研究通过有效解决无人机捕获图像中运动模糊效果相关的挑战,有助于提高基于无人机的设施安全检查的质量和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Drones
Drones Engineering-Aerospace Engineering
CiteScore
5.60
自引率
18.80%
发文量
331
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