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Brightness-Based Selection and Edge Detection-Based Enhancement Separation Algorithm for Low-Resolution Metal Transfer Images

机译:低亮度金属转移图像的基于亮度的选择和基于边缘检测的增强分离算法

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摘要

Next-generation gas metal arc welding (GMAW) machines require the rapid metal transfer process be accurately monitored using a high-speed vision system and be feedback controlled. However, the necessity for high frame rate reduces the resolution achievable and bright welding arc makes it difficult to clearly image the metal transfer process. Processing of images for real-time monitoring of metal transfer process is thus challenging. To address this challenge, the authors analyzed the characteristics of metal transfer images in a novel modification of GMAW, referred to as double-electrode GMAW, and proposed an algorithm consisting of a system of effective steps to extract the needed droplet feedback information from high frame rate low-resolution metal transfer images. Experimental results verified the effectiveness of the proposed algorithm in automatically locating the droplet and computing the droplet size with an adequate accuracy.
机译:下一代气体保护金属电弧焊(GMAW)机器要求使用高速视觉系统对快速的金属转移过程进行精确监控并进行反馈控制。然而,高帧频的必要性降低了可获得的分辨率,并且明亮的焊接电弧使得难以清晰地成像金属转移过程。因此,用于实时监控金属转移过程的图像处理非常具有挑战性。为了解决这一挑战,作者分析了GMAW的一种新型改进形式(称为双电极GMAW)中的金属转移图像的特征,并提出了一种算法,该算法由有效步骤系统组成,可从高帧中提取所需的液滴反馈信息。率低分辨率金属转移图像。实验结果证明了该算法在自动定位液滴并以足够的精度计算液滴大小方面的有效性。

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