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Accuracy estimation of detection of casting defects in X-ray images using some statistical techniques

机译:使用某些统计技术估算X射线图像中铸件缺陷的准确性估计

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摘要

Casting is one of the most important processes in the manufacture of parts for various kinds of industries, among which the automotive industry stands out. Like every manufacturing process, there is the possibility of the occurrence of defects in the materials from which the parts are made, as well as of the appearance of faults during their operation. One of the most important tools for verifying the integrity of cast parts is radioscopy. This paper presents pattern recognition methodologies in radioscopic images of cast automotive parts for the detection of defects. Image processing techniques were applied to extract features to be used as input of the pattern classifiers developed by artificial neural networks. To estimate the accuracy of the classifiers, use was made of random selection techniques with sample reposition (Bootstrap technique) and without sample reposition. This work can be considered innovative in that field of research, and the results obtained motivate this paper.
机译:铸造是用于各种行业的零件制造中最重要的过程之一,其中汽车业尤为突出。像每个制造过程一样,在制造零件的材料中也可能会出现缺陷,并且在操作过程中会出现故障。检验铸件完整性的最重要工具之一就是射线照相。本文提出了铸造汽车零件的放射线图像中的模式识别方法,用于检测缺陷。图像处理技术应用于提取特征,以用作人工神经网络开发的模式分类器的输入。为了估计分类器的准确性,使用了带有样本重新放置(Bootstrap技术)而没有样本重新放置的随机选择技术。这项工作可以被认为是该研究领域的创新,所获得的结果激励了本文。

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