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首页> 外文期刊>Optics and Lasers in Engineering >Conditional generative adversarial network-based training image inpainting for laser vision seam tracking
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Conditional generative adversarial network-based training image inpainting for laser vision seam tracking

机译:基于机成的对抗网络的激光视觉缝线跟踪的训练图像验证

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摘要

In the process of welding seam tracking based on laser vision, the location accuracy of the seam largely depends on the quality of the welding image training samples acquired in real time. However, the interference of a strong arc, spatter, and other noise in the welding process seriously contaminate the training images, which can cause tracking model drift and result in tracking failure. To enhance the robustness of the seam tracking model and improve the welding accuracy, a welding image inpainting method based on a conditional generative adversarial network (CGAN) is proposed. We constructed a welding image inpainting network and defined a loss function for the network training. Through training, the network learns an end-to-end mapping from a noisy welding image to the corresponding noise-free image. Then, to realize accurate automatic seam tracking, the optimized inpainting network was integrated into a tracker for training sample restoration, which improves the antinoise interference performance of the seam tracking system. The experimental results show that the proposed seam tracking method can stabilize the average welding error within 0.2 mm, which is superior to the existing methods. This demonstrate the effectiveness of the proposed method for improving the robustness and welding accuracy of the seam tracking system.
机译:在基于激光视觉的焊缝跟踪过程中,接缝的位置精度在很大程度上取决于实时获取的焊接图像训练样本的质量。然而,焊接过程中强弧,飞溅和其他噪声的干扰严重污染了训练图像,这可能导致跟踪模型漂移并导致跟踪失败。为提高接缝跟踪模型的稳健性,提高焊接精度,提出了一种基于条件生成对抗网络(CGAN)的焊接图像染色方法。我们构建了一种焊接图像修复网络,并为网络培训定义了损耗功能。通过训练,网络从嘈杂的焊接图像到相应的无噪声图像学习从噪声焊接图像的端到端映射。然后,为了实现精确的自动缝线跟踪,优化的染色网络集成到用于训练样品恢复的跟踪器中,这提高了接缝跟踪系统的抗分道干扰性能。实验结果表明,所提出的接缝跟踪方法可以使平均焊接误差稳定在0.2mm内,这优于现有方法。这证明了提高接缝跟踪系统的鲁棒性和焊接精度的提出方法的有效性。

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