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Weld Defect Classification in Radiographic Film using Statistical Texture and Support Vector Machine

机译:使用统计纹理和支持向量机射线薄膜焊接缺陷分类

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Weld defect identification requires radiographic operator experience, so the interpretation of weld defect type could potentially bring subjectivity and human error factor. This paper proposes Statistical Texture and Support Vector Machine method for weld defect type classification in radiographic film. Digital image processing technique applied in this paper implements noise reduction using median filter, contrast stretching, and image sharpening using Laplacian filter. Statistical method feature extraction based on image histogram was proposed for describing weld defects texture characteristic of a radiographic film digital image. Multiclass Support Vector Machine (SVM) algorithm was used to perform classification of weld defects type. The result of classification testing shows that the proposed method can classify 83,3% correctly from 60 testing data of weld defects radiographic film.
机译:焊接缺陷识别需要射线照相操作员经验,因此焊接缺陷类型的解释可能会带来主观性和人为错误因素。本文提出统计纹理和射线薄膜焊接缺陷型分类的支持向量机方法。本文应用的数字图像处理技术采用中值滤波器,对比拉伸和使用拉普拉斯滤光片锐化实现降噪。提出了基于图像直方图的统计方法特征提取,用于描述射线膜数字图像的焊接缺陷纹理特性。多种支持向量机(SVM)算法用于执行焊接缺陷类型的分类。分类测试的结果表明,所提出的方法可以从焊接缺陷射线膜的60个测试数据正确分类83,3%。

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