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A machine vision approach to seam tracking in real-time in PAW of large-diameter stainless steel tube

机译:大口径不锈钢管PAW中实时跟踪接缝的机器视觉方法

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摘要

Manual monitoring and seam tracking through watching weld pool images in real-time, by naked eyes or by industrial TV, are experience-depended, subjective, labor intensive, and sometimes biased. So it is necessary to realize the automation of computer-aided seam tracking. A PAW (plasma arc welding) seam tracking system was developed, which senses the molten pool and the seam in one frame by a vision sensor, and then detects the seam deviation to adjust the work piece motion adaptively to the seam position sensed by vision sensor. A novel molten pool area image-processing algorithm based on machine vision was proposed. The algorithm processes each image at the speed of 20 frames/second in real-time to extract three feature variables to get the seam deviation. It is proved experimentally that the algorithm is very fast and effective. Issues related to the algorithm are also discussed.
机译:通过肉眼或工业电视实时观看焊缝池图像进行手动监控和焊缝跟踪取决于经验,主观,劳动强度大,有时会产生偏差。因此有必要实现计算机辅助接缝跟踪的自动化。开发了一种PAW(等离子弧焊)接缝跟踪系统,该系统通过视觉传感器感测一帧中的熔池和接缝,然后检测接缝偏差,以根据视觉传感器感应到的接缝位置自适应地调整工件运动。提出了一种新的基于机器视觉的熔池面积图像处理算法。该算法以20帧/秒的速度实时处理每个图像,以提取三个特征变量以获得接缝偏差。实验证明该算法非常快速有效。还讨论了与算法有关的问题。

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