Weld defect detection based on Gaussian curve

Yueming Li, T. W. Liao
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引用次数: 16

Abstract

Develops a weld defect detection methodology based on the assumption that a line profile of a defectless weld image can be approximated by a Gaussian distribution curve. The line profile variations of a weld image caused by defects are classified into three defect patterns, defect-peaks, defect-troughs and defect-slant-concaves. Dark image enhancement is used to control the level of the noises which otherwise would have become worse in normalization. Two kinds of B-spline curve fittings, tight fitting and loose fitting, are performed to facilitate defect identification. The purpose of tight fitting is to reduce the noises but keep the profile variations caused by defects, while that of loose fitting is to restore the bell shape as if no defects would have occurred. The roughness of a line image profile is defined and used to estimate the smoothing factor used for fitting the line profile. The results of preliminary tests showed that more than 90% of defects are successfully detected.
基于高斯曲线的焊缝缺陷检测
基于无缺陷焊缝图像的线轮廓可以用高斯分布曲线近似的假设,开发了一种焊缝缺陷检测方法。将缺陷引起的焊缝图像线形变化分为缺陷峰型、缺陷谷型和缺陷斜凹型三种缺陷模式。暗图像增强用于控制噪声的水平,否则在归一化中会变得更糟。为了便于缺陷识别,进行了两种b样条曲线配合:紧配合和松配合。紧配合的目的是减少噪声,但保留缺陷引起的轮廓变化,而松配合的目的是恢复钟形,就像没有缺陷一样。定义了线图像轮廓的粗糙度,并将其用于估计用于拟合线轮廓的平滑因子。初步测试结果表明,90%以上的缺陷被成功检测出来。
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