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A robust weld seam recognition method under heavy noise based on structured-light vision

机译:基于结构光视觉的强噪声下鲁棒焊缝识别方法

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摘要

Structured-light vision systems are widely used in robotic welding. The key to improving the robotic visual servo performance and weld quality is the weld seam recognition accuracy. Common detection algorithms are likely to be disturbed by the noise of spatter and arc during the welding process. In this paper, a weld seam recognition algorithm is proposed based on structured light vision to overcome this challenge. The core of this method is fully utilizing information of previous frames to process the current frame, which can make weld seam extraction both more robust and effective. The algorithm can be divided into three steps: initial laser center line recognition, online laser center line detection, and weld feature extraction. A Laplacian of Gaussian filter is used for recognizing the laser center line in the first frame. Afterwards, an algorithm based on the NURBS-snake model detects the laser center line online in a dynamic region of interest (abbreviated ROI). The center line obtained from first step is set as the initial contour of the NURBS-snake model. Using the line obtained from the previous step, feature points are determined by segmentation and straight-line fitting, while the position of the weld seam can be calculated according to the feature points. The accuracy, efficiency and robustness of the recognition algorithm are verified by experiments.
机译:结构光视觉系统广泛用于机器人焊接。改善机器人视觉伺服性能和焊接质量的关键是焊缝识别精度。普通的检测算法很可能会在焊接过程中受到飞溅和电弧噪声的干扰。为了克服这一挑战,本文提出了一种基于结构化视觉的焊缝识别算法。该方法的核心是充分利用先前帧的信息来处理当前帧,这可以使焊缝提取更加可靠和有效。该算法可分为三个步骤:初始激光中心线识别,在线激光中心线检测和焊接特征提取。高斯滤波器的拉普拉斯算子用于识别第一帧中的激光中心线。然后,基于NURBS蛇形模型的算法在感兴趣的动态区域(缩写为ROI)中在线检测激光中心线。从第一步获得的中心线设置为NURBS蛇模型的初始轮廓。使用从上一步获得的线,可以通过分割和直线拟合确定特征点,而可以根据特征点计算焊缝的位置。实验验证了该识别算法的准确性,有效性和鲁棒性。

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