Huang Jiaxi, Liu Guixiong
School of Mechanical and Automotive Engineering, South China University of Technology, Guangzhou 510640, China.
Sensors (Basel). 2024 Dec 2;24(23):7713. doi: 10.3390/s24237713.
Drones have emerged as a critical tool for the detection of high-altitude glass curtain cracks. However, their utility is often compromised by vibrations and other environmental factors that can induce motion blur, compromising image quality and the accuracy of crack detection. This paper presents a novel GAN-based and enhanced U-shaped Transformer network, named GlassCurtainCrackDeblurNet, designed specifically for the deblurring of drone-captured images of glass curtain cracks. To optimize the performance of our proposed method for this application, we have meticulously created the GlassCurtainCrackDeblur Dataset. Our method demonstrates superior qualitative and quantitative outcomes when compared to other established deblurring techniques on both the GoPro Dataset and the GlassCurtainCrackDeblur Dataset.
无人机已成为检测高空玻璃幕墙裂缝的关键工具。然而,其效用常常因振动和其他环境因素而受损,这些因素会导致运动模糊,从而降低图像质量和裂缝检测的准确性。本文提出了一种基于生成对抗网络(GAN)的增强型U型Transformer网络,名为GlassCurtainCrackDeblurNet,专门用于对无人机拍摄的玻璃幕墙裂缝图像进行去模糊处理。为了优化我们提出的方法在此应用中的性能,我们精心创建了GlassCurtainCrackDeblur数据集。与GoPro数据集和GlassCurtainCrackDeblur数据集上的其他既定去模糊技术相比,我们的方法在定性和定量方面都展现出了卓越的效果。