首页> 外文期刊>NDT & E International: Independent Nondestructive Testing and Evaluation >Deep neural networks based approach for welded joint detection of oil pipelines in radiographic images with Double Wall Double Image exposure
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Deep neural networks based approach for welded joint detection of oil pipelines in radiographic images with Double Wall Double Image exposure

机译:双壁双壁双壁曝光的基于焊接图像中的油管道焊接接头检测的深度神经网络

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This paper describes a method to support the field of Nondestructive Testing, especially, in radiographic inspection activities. It aims at detecting welded joints of oil pipelines in radiographs with Double Wall Double Image exposure. The proposed approach extracts information (windows of pixels) from the pipeline region in the radiographic image and then applies Deep Neural Network (DNN) models to identify which windows correspond to welded joints. We use pre-trained DNNs to map the knowledge from ImageNet Large Scale Visual Recognition Challenge to the welded joint context. The experiments consider 13 DNN models and 3 DNN input settings: stretched, proportional V and proportional H. Since, occasionally, radiographic images may be corrupted by some types of noise (e.g. white, impulsive), we also include experiments considering its influence on the DNNs behavior and its related results. The best combination provided an F-score average of 96.00% in the welded joint detection. The main contributions of this work are the proposed window extraction technique and a robust analysis of the noise influence on welded joint detection using different DNN models, input settings, exposure techniques and radiographic acquisition sources.
机译:本文介绍了一种支持非破坏性测试领域的方法,特别是在射线照相检测活动中。它旨在通过双壁双壁图像曝光检测射线照相中的油管道的焊接接头。所提出的方法从放射线图像中的管道区域提取信息(像素的窗口),然后应用深神经网络(DNN)模型以识别哪个窗口对应于焊接接头。我们使用预先训练的DNN来将知识从想象人的知识映射到焊接联合上下文的大规模视觉识别挑战。实验考虑了13个DNN模型和3个DNN输入设置:拉伸,比例V和比例H.由于偶尔,射线照相图像可能被某些类型的噪声(例如,白色,脉冲)损坏,我们还包括考虑其对其影响的实验DNNS行为及其相关结果。最佳组合在焊接接头检测中提供了96.00%的F刻度平均值。这项工作的主要贡献是所提出的窗口提取技术和使用不同DNN型号,输入设置,曝光技术和射线照相采集源的焊接关节检测对噪声影响的稳健分析。

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