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An ameliorated deep dense convolutional neural network for accurate recognition of casting defects in X-ray images

机译:一种改进的深致密卷积神经网络,用于准确识别X射线图像中的铸造缺陷

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摘要

Recognizing defects in X-ray images plays an important role in the detection of internal defects in titanium alloy castings. However, the existing manual defects recognition methods have common drawbacks such as unstable artificial recognition, misrecognition, huge workload, and low efficiency of recognition. To make up for the shortcomings, an ameliorated deep dense convolutional neural network (BX-Net) was presented to accurately recognize casting defects in X-ray images and effectively extract highly discriminative features of different categories. DenseNet121 was used as the backbone of BX-Net and the feature extracted by DenseNet121 was fully shared by the two inputs of a bilinear pooling layer. Transfer learning was applied to reduce the demand for data and hyperparameters' tuning. The backbone of BX-Net was firstly trained on the ImageNet and then all layers of BX-Net was fine-tuned on nine-hundred X-ray images of TiAl aero casting components. Other six deep convolutional neural networks (DenseNet121, EfficientNetB4, EfficientNetB7, ResNet50, VGG16 and Xception) were also trained to be compared with the presented BX-Net. Two Support Vector Machines were trained on the LBP features data set and HOG features data set of nine-hundred X-ray images of TiAl aero casting components respectively Experiments comparing BX-Net with other six deep learning models and two machine learning models on one hundred X-ray images (test set) of TiAl aero casting components were carried out. The comparison results show that BX-Net has the least parameters except for the Densenet121. The recall and accuracy of BX-Net were 99% and 99% respectively. In addition, the comparison results also show that BX-Net was the only model that learned discriminative feature representation of the casting X-ray image data set. The BX-Net proposed in this paper is expected to overcome the shortcomings of manual defects recognition. (C) 2021 Elsevier B.V. All rights reserved.
机译:识别X射线图像中的缺陷在检测钛合金铸件中的内部缺陷中起重要作用。然而,现有的手动缺陷识别方法具有共同的缺点,例如不稳定的人工识别,误导,巨大的工作量和低识别效率。为了弥补缺点,提出了一种改进的深致密卷积神经网络(BX-Net),以准确地识别X射线图像中的铸造缺陷,并有效提取不同类别的高度辨别特征。 DenSenet121用作BX-Net的骨架,并且Densenet121提取的特征由双线性池池层的两个输入完全共用。应用转移学习以减少对数据和QuandParameters调整的需求。 BX-Net的骨干首先培训了想象的,然后在Tial Aero铸造部件的九百X射线图像上进行微调。还培训了其他六个深度卷积神经网络(DenSenet121,CefenceNetB4,WeferencyNetB,Reset50,VGG16和Xcepion),与所呈现的BX-Net进行培训。两个支持向量机在LBP上培训了数据集数据集和HOG特征Tial Aero铸造部件的九百X射线图像的数据集分别进行了实验,将BX-Net与其他六个深度学习模型和两台机器学习模型进行了比较进行Tial Aero铸造组分的X射线图像(测试组)。比较结果表明,BX-Net具有除DenSenet121之外的最少参数。 BX-Net的召回和准确性分别为99%和99%。另外,比较结果还表明,BX-Net是学习铸造X射线图像数据集的鉴别特征表示的唯一模型。本文提出的BX-Net预计将克服手工缺陷识别的缺点。 (c)2021 elestvier b.v.保留所有权利。

著录项

  • 来源
    《Knowledge-Based Systems》 |2021年第17期|107096.1-107096.18|共18页
  • 作者单位

    Huazhong Univ Sci & Technol Sch Mat Sci & Engn State Key Lab Mat Proc & Die & Mould Technol Wuhan 430074 Peoples R China;

    Huazhong Univ Sci & Technol Sch Mat Sci & Engn State Key Lab Mat Proc & Die & Mould Technol Wuhan 430074 Peoples R China;

    Xian Space Engine Co Ltd Xian 710100 Peoples R China;

    Southwest Tech & Engn Res Inst Chongqing 400039 Peoples R China;

    Huazhong Univ Sci & Technol Sch Mat Sci & Engn State Key Lab Mat Proc & Die & Mould Technol Wuhan 430074 Peoples R China;

    Xian Space Engine Co Ltd Xian 710100 Peoples R China;

    Huazhong Univ Sci & Technol Sch Mat Sci & Engn State Key Lab Mat Proc & Die & Mould Technol Wuhan 430074 Peoples R China;

    Huazhong Univ Sci & Technol Sch Mat Sci & Engn State Key Lab Mat Proc & Die & Mould Technol Wuhan 430074 Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Deep dense CNN; Casting components; X-ray images; Accurate defects recognition; Discriminative feature representation;

    机译:深致密的CNN;铸造组件;X射线图像;准确的缺陷识别;鉴别特征表示;

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