Gao Fei, Li Bing, Chen Lei, Wei Xiang, Shang Zhongyu, Liu Chunman
State Key Laboratory for Manufacturing Systems Engineering, Xi'an Jiaotong University, Xi'an, 710049, China; International Joint Laboratory for Micro/Nano Manufacturing and Measurement Technology, Xi'an Jiaotong University, Xi'an, 710049, China.
State Key Laboratory for Manufacturing Systems Engineering, Xi'an Jiaotong University, Xi'an, 710049, China; International Joint Laboratory for Micro/Nano Manufacturing and Measurement Technology, Xi'an Jiaotong University, Xi'an, 710049, China.
Ultrasonics. 2024 Feb;137:107177. doi: 10.1016/j.ultras.2023.107177. Epub 2023 Oct 9.
In ultrasonic testing, diffraction artifacts generated around defects increase the challenge of quantitatively characterizing defects. In this paper, we propose a label-enhanced semi-supervised CycleGAN network model, referred to as LESS-CycleGAN, which is a conditional cycle generative adversarial network designed for accurately characterizing defect morphology in ultrasonic testing images. The proposed method introduces paired cross-domain image samples during model training to achieve a defect transformation between the ultrasound image domain and the morphology image domain, thereby eliminating artifacts. Furthermore, the method incorporates a novel authenticity loss function to ensure high-precision defect reconstruction capability. To validate the effectiveness and robustness of the model, we use simulated 2D images of defects and corresponding ultrasonic detection images as training and test sets, and an actual ultrasonic phased array image of a test block as the validation set to evaluate the model's application performance. The experimental results demonstrate that the proposed method is convenient and effective, achieving subwavelength-scale defect reconstruction with good robustness.
在超声检测中,缺陷周围产生的衍射伪像增加了对缺陷进行定量表征的难度。本文提出了一种标签增强的半监督循环生成对抗网络模型,称为LESS-CycleGAN,它是一种条件循环生成对抗网络,旨在准确表征超声检测图像中的缺陷形态。该方法在模型训练过程中引入配对的跨域图像样本,以实现超声图像域和形态图像域之间的缺陷转换,从而消除伪像。此外,该方法还引入了一种新颖的真实性损失函数,以确保高精度的缺陷重建能力。为了验证模型的有效性和鲁棒性,我们使用缺陷的模拟二维图像和相应的超声检测图像作为训练集和测试集,并使用测试块的实际超声相控阵图像作为验证集来评估模型的应用性能。实验结果表明,该方法方便有效,能够实现亚波长尺度的缺陷重建,且具有良好的鲁棒性。