LBPriu2 Features for Classification of Radiographic Weld Images

J. Kumar, P. Arvind, Prashant Singh, Yamini Sarada, Neeraj Kumar, Shivain Bhardwaj
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引用次数: 1

Abstract

Welding defects arises in welding. The welding material needs appropriate examination for its smooth operation and design. Non – Destructive Inspection is one of the significant methodology for proper recognition of the flaw defect. In the present work, an effort has been made to correctly identify and classify the weld defects. A dataset of 79 images with 08 defects is collected from Mechanical and Industrial Engineering Department of Indian Institute of Technology Roorkee. The image dataset has been pre-processed and the features have been extracted by LBPriu2 and processed by artificial neural network for further classification. The 10 level features have been extracted by LBPriu2 and fed to neural network after Image Segmentation. The features have been analyzed by Feed Forward neural network for classification. A detailed analysis of the different image segmentation methods with LBPriu2 features is analyzed. Irrespective of the poor quality of image dataset, classification accuracy of 89.9% is obtained.
用于射线照相焊缝图像分类的LBPriu2特征
焊接时出现焊接缺陷。焊接材料需要进行适当的检查,以确保其顺利运行和设计。无损检测是正确识别缺陷缺陷的重要方法之一。在本工作中,对焊接缺陷进行了正确的识别和分类。从印度理工学院机械与工业工程系收集了79幅图像和08个缺陷的数据集。对图像数据集进行预处理,利用LBPriu2提取特征,并进行人工神经网络处理,进一步分类。利用LBPriu2提取出10个级别的特征,经过图像分割后输入到神经网络中。采用前馈神经网络对其特征进行分类分析。详细分析了基于LBPriu2特征的不同图像分割方法。在不考虑图像数据集质量差的情况下,获得了89.9%的分类准确率。
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