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Robust seam tracking via a deep learning framework combining tracking and detection

机译:通过深入学习框架结合跟踪和检测的强大缝线跟踪

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摘要

To address the problem of low welding precision caused by possible disturbances, e.g., strong arc lights, welding splashes, and thermally induced deformations, in complex unstructured welding environments, a method based on a deep learning framework that combines visual tracking and object detection is proposed. First, a welding image patch is directly fed into a convolutional long short-term memory network, which preserves the target's spatial structure and is efficient in terms of memory use, with the aim of avoiding some disturbances. Second, we take advantage of features from various convolutional neural network layers and determine weld feature points through similarity matching among multiple feature layers. However, feeding in noisy images causes the tracker to accumulate interference information, which results in model drift. Thus, using a welding seam detection network, the object filter is periodically reinitialized to improve tracking accuracy and robustness. Experimental results show that the welding torch runs smoothly with a strong arc light and welding splash interference and that tracking error can reach +/- 0.5 mm, which is sufficient to satisfy actual welding requirements. The advantages of our algorithm are validated through several comparative experiments. (C) 2020 Optical Society of America
机译:为了解决可能的干扰引起的低焊接精度的问题,例如,在复杂的非结构化焊接环境中,在复杂的非结构化焊接环境中,基于深度学习框架的方法,提出了一种基于视觉跟踪和物体检测的深度学习框架的方法。首先,将焊接图像贴片直接进入卷积的长短期存储器网络,其保留目标的空间结构,并且在内存使用方面具有高效,目的是避免一些干扰。其次,我们利用各种卷积神经网络层的特征,并通过多个特征层之间的相似性确定焊接特征点。然而,在嘈杂的图像中喂养使得跟踪器累积干扰信息,从而导致模型漂移。因此,使用焊缝检测网络,对象滤波器周期性地重新初始化以提高跟踪精度和鲁棒性。实验结果表明,焊炬呈平稳地运行,电弧灯和焊接飞溅干扰,跟踪误差可达+/- 0.5毫米,足以满足实际焊接要求。通过几个比较实验验证了我们算法的优点。 (c)2020美国光学学会

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    《Applied optics》 |2020年第14期|共11页
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