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Research on Approaches for Computer Aided Detection of Casting Defects in X-ray Images with Feature Engineering and Machine Learning

机译:具有特征工程和机器学习的X射线图像铸造缺陷的计算机辅助缺陷方法研究

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X-ray testing has been adopted as the principal non-destructive testing approach to identify defects within a casting component. However, manual detection for X-ray images carried out by operator or expert always tends to be time-consuming, subjective and error-prone. Intelligent inspection techniques based on computer vision, which have been broadly employed in object recognition with promising results in optical natural images, provides a new idea for computer aided detection of casting defects in X-ray images. In this paper, we compare and evaluate several methods, most of which have not been researched for computer aided detection of casting defects in X-ray images and are based on different feature engineering methods and machine learning models, including local binary patterns-SVM, Gabor-SGD, histogram of oriented gradient-random forest and combination among them, to pursue an approach with better performance on detection of casting defects in X-ray images from the our InteCAST dataset. The experimental results demonstrate that the best performance was acquired by LBP feature and an ensemble learning model, which indicates that the approach proposed provides valuable reference for solving the problems in manual detection.
机译:已采用X射线测试作为识别铸造部件内的缺陷的主要无损检测方法。然而,操作员或专家执行的X射线图像的手动检测总是往往是耗时的,主观和易于出错的。基于计算机视觉的智能检测技术,已经广泛用于对象识别,在光学自然图像中具有有前途的结果,为X射线图像中的铸造缺陷提供了一种新的思路。在本文中,我们比较和评估了多种方法,其中大部分方法尚未研究X射线图像中的铸造缺陷的计算机辅助缺陷,并基于不同的特征工程方法和机器学习模型,包括局部二进制模式-SVM, Gabor-SGD,面向梯度随机森林的直方图和其中的组合,以追求具有更好性能的方法,检测来自我们的intecast数据集的X射线图像中的铸造缺陷。实验结果表明,通过LBP特征和集合学习模型获得了最佳性能,这表明该方法提出了用于解决手动检测中的问题的有价值的参考。

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