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Automatic Inspection System of Welding Radiographic Images Based on ANN Under a Regularisation Process

机译:正则化过程中基于人工神经网络的焊接射线图像自动检查系统

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摘要

In this paper, we describe an ANN with a modified performance function which is used in an automatic inspection system of welding defects in radiographic images. In a first stage, image processing techniques, including noise reduction, contrast enhancement, thresholding and labelling, were implemented to help in the recognition of weld regions and the detection of weld defects. In a second stage, a set of geometrical features which characterise the defect shape and orientation was proposed and extracted between defect candidates. In a third stage, an artificial neural network for weld defect classification was used under a regularisation process with different architectures for the input layer and the hidden layer. Our aim is to analyse this ANN modifying the performance function using a y parameter in its function, for different neurons in the input and hidden layer in order to obtain a better performance on the classification stage. The automatic system of recognition and classification proposed consists in detecting the four main types of weld defects met in practice plus the non-defect type. The results was compared with the aim to know the parameters that allow the best classification. The correlation coefficients, confusion matrix and the accuracy or the proportion of the total number of predictions that were correct was determined obtaining a value of 80% for the ANN using a modified performance function with a parameter ? = 0.6.
机译:在本文中,我们描述了一种具有改进性能功能的人工神经网络,该神经网络用于放射线图像中焊接缺陷的自动检查系统。在第一阶段,实施了图像处理技术,包括降噪,对比度增强,阈值处理和标记,以帮助识别焊接区域和检测焊接缺陷。在第二阶段中,提出了一组表征缺陷形状和方向的几何特征,并在候选缺陷之间进行提取。在第三阶段,在规则化过程中使用人工神经网络对焊接缺陷进行分类,其中输入层和隐藏层的结构不同。我们的目标是针对输入层和隐藏层中的不同神经元,使用y参数在函数中使用y参数来分析该ANN修改性能函数,以便在分类阶段获得更好的性能。提出的自动识别和分类系统包括检测实践中遇到的四种主要焊接缺陷类型以及无缺陷类型。将结果与旨在了解允许最佳分类的参数进行比较。确定的相关系数,混淆矩阵和准确度或预测总数的比例是正确的,或者使用参数为?的改进性能函数获得ANN的80%值。 = 0.6。

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