Using deep learning improve the aerial engine nondestructive radiographic tests

Zhi-Hao Chen, J. Juang
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Abstract

This paper aim use of deep convolutional neural networks (CNNs) with generative adversarial networks for aircraft engine X-ray cracks image classification and detection posed. On the basis of the CNNs approach requires large amounts of X-ray defect imagery data. Those data facilitate a cracks image segmentation and tracking on multiple defect of aircraft engine defection by edge detection feature extraction and classification process. The use of the deep CNNs approach deep learning model seeks to augment and improve existing automated nondestructive testing (NDT) diagnosis. Within the context of X-ray screening, limited numbers insufficient types of X-ray aircraft engine defect data samples can thus pose another problem in support vector machine (SVM) model accuracy. To overcome this issue, we employ a deep learning paradigm of generative adversarial network such that a pre-trained deep CNNs. We are primarily trained for aircraft engine defect X-ray image classification eight types where sufficient training data exists. This result are empirically show that deep learning net complex with the pre-tuned model features also more yield superior performance to human crafted features on object identification tasks. Overall the achieve result get more then 90% accuracy based on the DetectNet features model retrained with 8 types of composite material defect classifiers.
利用深度学习技术改进航空发动机无损射线检测
本文旨在利用深度卷积神经网络(cnn)结合生成对抗网络对飞机发动机x射线裂纹图像进行分类和检测。在cnn方法的基础上需要大量的x射线缺陷图像数据。这些数据通过边缘检测特征提取和分类处理,实现了对飞机发动机缺陷多缺陷的裂纹图像分割和跟踪。使用深度cnn方法的深度学习模型旨在增强和改进现有的自动无损检测(NDT)诊断。在x射线筛查的背景下,由于x射线飞机发动机缺陷数据样本数量有限,种类不足,因此会给支持向量机(SVM)模型的准确性带来另一个问题。为了克服这个问题,我们采用了一种生成对抗网络的深度学习范式,这样一个预训练的深度cnn。我们主要训练飞机发动机缺陷x射线图像分类的八种类型,有足够的训练数据。这一结果表明,具有预调模型特征的深度学习网络复合物在对象识别任务上也比人工制作的特征产生更优越的性能。综合8种复合材料缺陷分类器对DetectNet特征模型进行再训练,得到的结果准确率达到90%以上。
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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