Weld Defect Detection based on Completed Local Ternary Patterns

Kai Yan, Qian Dong, Tingting Sun, Ming Zhang, Siyuan Zhang
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引用次数: 9

Abstract

Contemporarily, the artificial way to review the X-ray film is a common manner to the Quality Examination for Weld. However, this manner has much subjectivity, which may greatly affect the detection efficiency and accuracy, especially after doing a great deal of repetitive mental work. The automatic welding defect inspection system based on X-ray could overcome the shortcomings of artificial marking. Worldwide researchers have made extensive and in-depth research on defect extraction and recognition, and have achieved a great number of effective research results. However, there are still some issues, such as the accurate detection of small defects in uneven background, and effective classification of various defects and automatic identification. For the issues of the weld image based on X-ray, this paper aims to use common texture features to make feature extraction and improved local binary patterns(LBP) as the foundations to propose the completed local ternary patterns (CLTP) to detect weld defects and use SVM classifier based on binary tree to classify and recognize the weld defects to solve the issues on inaccurate detection of small defects and lack of valid classification.
基于局部完全三元模式的焊缝缺陷检测
目前,人工对x射线底片进行复核是焊缝质量检测的常用方法。然而,这种方式具有很大的主观性,可能会极大地影响检测效率和准确性,特别是在做了大量重复的脑力劳动之后。基于x射线的焊接缺陷自动检测系统可以克服人工标记的缺点。国内外研究者对缺陷提取与识别进行了广泛而深入的研究,并取得了大量有效的研究成果。但是,在不均匀的背景下,小缺陷的准确检测,各种缺陷的有效分类和自动识别等问题仍然存在。针对基于x射线的焊缝图像问题,本文旨在利用常见的纹理特征进行特征提取,并以改进的局部二值模式(LBP)为基础,提出完整的局部三值模式(CLTP)检测焊缝缺陷,并利用基于二叉树的SVM分类器对焊缝缺陷进行分类识别,解决小缺陷检测不准确和缺乏有效分类的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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