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Weld Pool Image Segmentation of Hump Formation Based on Fuzzy C-Means and Chan-Vese Model

机译:基于模糊C型方式和Chan-VESE模型的驼峰池图像分割

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摘要

The geometric parameters of the weld pool can reflect welding quality, and thus, it can be important to detect the weld pool contour accurately and reliably. A passive vision system was designed to obtain the weld pool image of hump formation by an infrared transmitting filter, and a method of weld pool image segmentation strategy based on a Chan-Vese (CV) model with fuzzy C-means (FCM) is proposed. The FCM-CV algorithm uses an FCM model to set the initialization contour and then extracts the contour of the hump by the active contour CV model. FCM-CV algorithm eliminates the problem that the CV model is sensitive to the initial contour, and thus, the FCM-CV algorithm can extract the contours of the weld pool under different processing conditions. The contour of the hump is segmented, and the weld pool length feature is extracted. The results show that the truncation of the weld pool length is the main image feature reflecting the formation of the hump.
机译:焊接池的几何参数可以反映焊接质量,因此,准确且可靠地检测焊接池轮廓可能是很重要的。 设计了一种被动视觉系统,以通过红外发射滤波器获得驼峰形成的焊接池图像,并提出了一种基于CHAN-VEES(CV)模型的焊接池图像分割策略的方法,具有模糊C-MEAR(FCM) 。 FCM-CV算法使用FCM模型来设置初始化轮廓,然后通过活动轮廓CV模型提取驼峰的轮廓。 FCM-CV算法消除了CV模型对初始轮廓敏感的问题,因此,FCM-CV算法可以在不同的处理条件下提取焊接池的轮廓。 驼峰的轮廓被分段,提取焊接池长度特征。 结果表明,焊接池长度的截断是反映驼峰形成的主图像特征。

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