Deep Learning based Framework for Automatic Damage Detection in Aircraft Engine Borescope Inspection

Zejiang Shen, Xili Wan, Feng Ye, Xinjie Guan, S. Liu
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引用次数: 16

Abstract

To ensure high safety in civil aviation, borescope inspection has been widely applied in early damage detection of aircraft engines. Current manual damage inspection on borescope images inevitably results in low efficiency for engine status inspection. Traditional recognition methods are inefficient for damage detection due to complicated and noisy scenarios inside them. In this paper, a deep learning based framework is proposed which utilizes the state-of-the-art algorithm called Fully Convolutional Networks (FCN) to identify and locate damages from borescope images. Our framework can successfully identify two major types of damages, namely crack and burn, from borescope images and extract their region on these images with high prediction accuracy. Moreover, by applying the fine-tuning method, the proposed framework is further optimized to significantly reduce the amount of training data. With experiments on real borescope images data from one major airline company, we validate the efficiency and accuracy of our proposed framework through comparisons with other CNN architectures for damage identification and recognition.
基于深度学习的飞机发动机内径检测损伤自动检测框架
为了保证民用航空的高安全性,内窥镜检测在飞机发动机早期损伤检测中得到了广泛的应用。目前,人工对内窥镜图像进行损伤检测,必然导致发动机状态检测效率低下。传统的识别方法由于内部场景复杂、噪声大,对损伤检测的效率低下。本文提出了一种基于深度学习的框架,该框架利用最先进的全卷积网络(FCN)算法来识别和定位管道镜图像中的损伤。我们的框架可以成功地从管道镜图像中识别出裂纹和烧伤两种主要类型的损伤,并在这些图像上提取出它们的区域,预测精度很高。此外,通过应用微调方法,对所提出的框架进行了进一步优化,显著减少了训练数据量。通过对一家大型航空公司的真实内窥镜图像数据的实验,我们通过与其他CNN架构进行损伤识别和识别的比较,验证了我们提出的框架的效率和准确性。
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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