Department of Electrical and Computer Engineering, Université Laval, Quebec City, QC G1V 0A6, Canada.
Computer Vision and Systems Laboratory, Department of Electrical and Computer Engineering, 1065, Ave de la Médecine, Université Laval, Quebec City, QC G1V 0A6, Canada.
Sensors (Basel). 2023 Apr 27;23(9):4324. doi: 10.3390/s23094324.
In response to the growing inspection demand exerted by process automation in component manufacturing, non-destructive testing (NDT) continues to explore automated approaches that utilize deep-learning algorithms for defect identification, including within digital X-ray radiography images. This necessitates a thorough understanding of the implication of image quality parameters on the performance of these deep-learning models. This study investigated the influence of two image-quality parameters, namely signal-to-noise ratio (SNR) and contrast-to-noise ratio (CNR), on the performance of a U-net deep-learning semantic segmentation model. Input images were acquired with varying combinations of exposure factors, such as kilovoltage, milli-ampere, and exposure time, which altered the resultant radiographic image quality. The data were sorted into five different datasets according to their measured SNR and CNR values. The deep-learning model was trained five distinct times, utilizing a unique dataset for each training session. Training the model with high CNR values yielded an intersection-over-union (IoU) metric of 0.9594 on test data of the same category but dropped to 0.5875 when tested on lower CNR test data. The result of this study emphasizes the importance of achieving a balance in training dataset according to the investigated quality parameters in order to enhance the performance of deep-learning segmentation models for NDT digital X-ray radiography applications.
为了应对组件制造过程自动化带来的日益增长的检测需求,无损检测(NDT)继续探索利用深度学习算法进行缺陷识别的自动化方法,包括数字 X 射线射线照相图像中的方法。这就需要深入了解图像质量参数对这些深度学习模型性能的影响。本研究调查了两个图像质量参数(即信噪比(SNR)和对比噪声比(CNR))对 U-net 深度学习语义分割模型性能的影响。输入图像是通过改变千伏、毫安和曝光时间等曝光因素的组合获得的,这些因素改变了所得射线照相图像的质量。根据测量的 SNR 和 CNR 值,将数据分为五个不同的数据集。深度学习模型经过五次不同的训练,每次训练使用一个独特的数据集。使用高 CNR 值训练模型在同类别测试数据上的交并比(IoU)指标为 0.9594,但在测试低 CNR 测试数据时降至 0.5875。本研究的结果强调了根据所研究的质量参数在训练数据集中取得平衡的重要性,以便提高 NDT 数字 X 射线射线照相应用中深度学习分割模型的性能。