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Flaws classification using ANN for radiographic weld images

机译:使用ANN对焊缝图像进行缺陷分类

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This paper illustrates a novel approach for weld flaw classification incorporating texture feature extraction techniques and measurement of geometrical feature using Artificial Neural Network (ANN) classifier. The radiographic films of weld have been digitized first using digital camera, then these images are converted to gray image and region of interest are selected to reduce the processing time. Noise reduction and contrast enhancement techniques were implemented to assist in the recognition of weld region to identify the weld flaws. Further various segmentation techniques like edge base, region growing and watershed have been applied and tested on images to choose the best one for each flaws. Each of the delineation techniques are not equally important and worth for all types of flaws. Subsequently a different set of texture feature based on gray level co-occurrence matrix (GLCM) and measurement of geometrical features which characterize the flaws shape is extracted for each segmented image and given input to cascade-forward back propagation neural network using Levenberg-Marquardt training function. The classifier is trained to classify each of the image into different flaws categories. The proposed system delivers an overall classification accuracy of 87.34% for radiographic images of nine different types of weld flaws.
机译:本文阐述了一种新的焊接缺陷分类方法,该方法结合了纹理特征提取技术和使用人工神经网络(ANN)分类器对几何特征进行测量。首先使用数码相机将焊缝的射线照相胶片数字化,然后将这些图像转换为灰度图像,并选择感兴趣的区域以减少处理时间。实施了降噪和对比度增强技术,以帮助识别焊缝区域以识别焊缝缺陷。进一步应用了各种分割技术,例如边缘基础,区域生长和分水岭,并对图像进行了测试,以针对每种缺陷选择最佳的分割技术。每种划界技术并非同等重要,并且对于所有类型的缺陷都值得。随后,针对每个分割图像,提取基于灰度共生矩阵(GLCM)和表征缺陷形状的几何特征的度量的不同纹理特征集,并将其输入到使用Levenberg-Marquardt训练的级联前向传播神经网络中功能。训练分类器以将每个图像分类为不同的缺陷类别。对于九种不同类型的焊缝缺陷的射线照相图像,建议的系统可提供87.34%的总体分类精度。

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