Segmentation of Line Laser Stripe on Weld Image under Strong Interferences

HE Yiyan , LI Yan , XU Yang

Journal of Donghua University(English Edition) ›› 2026, Vol. 43 ›› Issue (2) : 120 -127.

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Journal of Donghua University(English Edition) ›› 2026, Vol. 43 ›› Issue (2) :120 -127. DOI: 10.19884/j.1672-5220.202501002
Information Technology and Artificial Intelligence
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Segmentation of Line Laser Stripe on Weld Image under Strong Interferences
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Abstract

To accurately and quickly segment the line laser stripes under interferences of strong noise and strong reflection, a lightweight weld line laser stripe segmentation network based on the DeepLabv3+ network, named WLS-Net, is proposed. To improve the segmentation speed of the network, the shallow residual network ResNet-18 is selected as the backbone network. Combining the multi-Dconv head transposed attention (MDTA) and the convolutional block attention module (CBAM), the multi-dimensional CBAM (MD-CBAM) is proposed, and the dynamic upsampling method (DySample) is chosen to replace the traditional bilinear interpolation to improve the segmentation accuracy. To address the foreground-background class imbalance in the weld line laser stripe image, the sum function of the Dice loss function (Dice Loss) and the pixel-wise cross-entropy loss function is chosen as the loss function of the model. The experimental results show that compared with the original DeepLabv3+ network, the WLS-Net achieves absolute improvements of 6.00% in IoU, 5.67% in precision, and 3.76% in F1 score on the weld line laser dataset, and the inference time of a single image is reduced by 18 ms. Compared with other semantic segmentation networks, the WLS-Net also achieves better segmentation effect and higher segmentation rate.

Keywords

weld seam image / laser stripe segmentation / DeepLabv3+ network / attention mechanism

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HE Yiyan, LI Yan, XU Yang. Segmentation of Line Laser Stripe on Weld Image under Strong Interferences. Journal of Donghua University(English Edition), 2026, 43(2): 120-127 DOI:10.19884/j.1672-5220.202501002

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Funding

National Natural Science Foundation of China(U1831123)

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