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Filtered selective search and evenly distributed convolutional neural networks for casting defects recognition

机译:过滤的选择性搜索和均匀分布的卷积神经网络,用于铸造缺陷识别

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摘要

X-ray flaw detection is a key link in the detection of internal defects in titanium alloy castings which are used for most important components in aeroengines. However, the existing manual defect detection methods from the X-ray images have common drawbacks such as unstable artificial recognition, misdetection, misjudgment, fails of quantitative analysis, huge workload, and low-quality inspection efficiency. To avoid these drawbacks, this paper proposes a new artificial intelligent (AI) method to detect and recognize the aerospace titanium casting defects from the X-ray images. It includes the target defect positioning method named as filtered selective search algorithm (FSS) and the defect classification method named as evenly distributed convolutional neural network (ED-CNN). In the target positioning step, through statistical analysis of defect characteristics, a filtered selective search algorithm is built with two filters (size and edge curvature). In this way, the FSS algorithm can position the defects with almost 100 % of accuracy, hence avoid missed detection and false detection. In the target classification step, an ED-CNN is constructed with a similar structure of the same number of layers in each feature extraction stage, and its entire architecture is evenly distributed. Compared with other three classic high-performance convolutional neural network models (AlexNet, VGG16 and VGG19), the ED-CNN model has the best performance. The ED-CNN model was tested with 324 targets from 50 original images, a classification accuracy of nearly 90 % was obtained for low density holes, porosity, linear defects, high density inclusions and casting structure. The FSS/ED-CNN method of two phases defect detection proposed in this paper can achieve accurate positioning and high accurate classification of typical defect targets, and is expected to solve the common drawbacks of "manual defect detection". The newly-proposed FSS/ED-CNN method has important research significance and engineering value.
机译:X射线探伤是航空发动机重要部件钛合金铸件内部缺陷检测的关键环节。然而,现有的基于X射线图像的手工缺陷检测方法普遍存在人工识别不稳定、误检、误判、定量分析失败、工作量大、质量检测效率低等缺点。为了避免这些缺点,本文提出了一种新的人工智能(AI)方法,从X射线图像中检测和识别航空航天钛铸件缺陷。它包括被称为滤波选择搜索算法(FSS)的目标缺陷定位方法和被称为均匀分布卷积神经网络(ED-CNN)的缺陷分类方法。在目标定位步骤中,通过对缺陷特征的统计分析,利用两个滤波器(尺寸和边缘曲率)构建了一个滤波选择搜索算法。这样,FSS算法可以以几乎100%的准确率定位缺陷,从而避免漏检和误检。在目标分类步骤中,在每个特征提取阶段构造一个具有相同层数的相似结构的ED-CNN,其整个结构均匀分布。与其他三种经典的高性能卷积神经网络模型(AlexNet、VGG16和VGG19)相比,ED-CNN模型的性能最好。用50幅原始图像中的324个目标对ED-CNN模型进行了测试,对低密度孔洞、孔隙率、线性缺陷、高密度夹杂物和铸件结构的分类准确率接近90%。本文提出的FSS/ED-CNN两相缺陷检测方法能够实现典型缺陷目标的精确定位和高精度分类,有望解决“人工缺陷检测”的常见缺陷。新提出的FSS/ED-CNN方法具有重要的研究意义和工程价值。

著录项

  • 来源
  • 作者单位

    Huazhong Univ Sci &

    Technol Sch Mat Sci &

    Engn State Key Lab Mat Proc &

    Die &

    Mould Technol Wuhan 430074 Hubei Peoples R China;

    Huazhong Univ Sci &

    Technol Sch Mat Sci &

    Engn State Key Lab Mat Proc &

    Die &

    Mould Technol Wuhan 430074 Hubei Peoples R China;

    Huazhong Univ Sci &

    Technol Sch Mat Sci &

    Engn State Key Lab Mat Proc &

    Die &

    Mould Technol Wuhan 430074 Hubei Peoples R China;

    Huazhong Univ Sci &

    Technol Sch Mat Sci &

    Engn State Key Lab Mat Proc &

    Die &

    Mould Technol Wuhan 430074 Hubei Peoples R China;

    Huazhong Univ Sci &

    Technol Sch Mat Sci &

    Engn State Key Lab Mat Proc &

    Die &

    Mould Technol Wuhan 430074 Hubei Peoples R China;

    Beijing Baimu High Tech Co Ltd Aeronaut Mat Beijing 100095 Peoples R China;

    Huazhong Univ Sci &

    Technol State Key Lab Digital Mfg Equipment &

    Technol Wuhan Peoples R China;

    Huazhong Univ Sci &

    Technol Sch Mat Sci &

    Engn State Key Lab Mat Proc &

    Die &

    Mould Technol Wuhan 430074 Hubei Peoples R China;

    Univ Leoben Dept Met Leoben Austria;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 一般性问题 ; 工程材料学 ;
  • 关键词

    Convolutional neural networks; Selective search; Defect detection; Classification; Casting;

    机译:卷积神经网络;选择性搜索;缺陷检测;分类;铸造;

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