基于机器视觉的有色金属缺陷识别

Hao-lei Song, Tianyu Yuan, Yixuan Wang, Dongyang Zhang, Ruiai Fan
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引用次数: 0

摘要

有色金属在铸造过程中容易产生毛刺。目前,金属的修复操作,如磨削和切割,都是在工厂手工进行的。钢锭修复需要智能化、自动化的方法,其中缺陷识别是关键。在此基础上,提出了一种高效、高精度的缺陷智能识别算法。首先,通过边缘检测、霍夫线检测和参数标定提取金属锭图像;其次,利用HSV颜色分割技术将金属锭与背景有效分离,得到反映金属锭形状信息的掩模图像;然后,采用一种新的方法对初步提取的直线进行筛选,得到金属锭的轮廓。最后,利用轮廓信息得到新的掩模图像,可以准确定位毛刺的位置。结果表明,该算法的成功率为91.6%。
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Non-ferrous Metal Defect Recognition Based on Machine Vision
It is easy to generate burrs on non ferrous metals in the process of casting. At present, the repair operations of metals, such as grinding and cutting, are carried out manually in the factory. Intelligent and automatic ingot repair methods are needed in which, defect identification is the key point. Based on this, this paper proposes an intelligent defect identification algorithm with the characteristics of high efficiency and high precision. Firstly, the metal ingot image is extracted by edge detection, Hough line detection and parameter calibration. Secondly, HSV color segmentation technology is used to effectively separate the metal ingot from the background, and the mask image reflecting the shape information of the metal ingot is obtained. Then, a new method is applied to screen the preliminarily extracted straight lines to obtain the contour of the metal ingot. Finally, by using the contour information, we can obtain a new mask image, in which the burr position can be accurately located. The results show that the proposed algorithm achieves the success rate of 91.6%.
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