金属薄板缺陷纵向裂纹技术视觉检测方法与算法的发展

Mortin Konstantin, Shamshin Maksim
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引用次数: 0

摘要

本文提出了数字图像中缺陷模糊子集的数学模型,并将其描述为一个分段常数函数。对探伤图像进行滤波分析,以保证检测量化算法的实现,并对得到的结果进行自适应二值化处理。所开发的方法使检测纵向裂纹类型的板料缺陷并计算该缺陷的各种几何参数成为可能。这种方法不仅可以看到纵向裂纹的检测,而且可以最大限度地减少第二级误报对探伤图像的误差。将上述结果与探伤仪的标注和YOLOv3神经网络进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of methods and algorithms of technical vision for detecting the defect longitudinal crack on sheet metal
The paper presents a mathematical model of a fuzzy subset of a defect in a digital image and is described as a piecewise constant function. The analysis of the filtering of the flaw detection image is given to ensure the implementation of the quantization algorithm of detection with subsequent adaptive binarization of the obtained result. The developed method makes it possible to detect a sheet metal defect of the longitudinal crack type and calculate various geometric parameters of this defect. This approach allows not only to see the detection of a longitudinal crack, but also to minimize the errors of the second level of false positives on flaw detection images. The above result is compared with the annotation of the flaw detector and with the YOLOv3 neural network.
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