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郭忠峰, 刘俊池, 杨钧麟. 基于关键点检测方法的焊缝识别[J]. 焊接学报, 2024, 45(1): 88-93. DOI: 10.12073/j.hjxb.20230204001
引用本文: 郭忠峰, 刘俊池, 杨钧麟. 基于关键点检测方法的焊缝识别[J]. 焊接学报, 2024, 45(1): 88-93. DOI: 10.12073/j.hjxb.20230204001
GUO Zhongfeng, LIU Junchi, YANG Junlin. Weld recognition based on key point detection method[J]. TRANSACTIONS OF THE CHINA WELDING INSTITUTION, 2024, 45(1): 88-93. DOI: 10.12073/j.hjxb.20230204001
Citation: GUO Zhongfeng, LIU Junchi, YANG Junlin. Weld recognition based on key point detection method[J]. TRANSACTIONS OF THE CHINA WELDING INSTITUTION, 2024, 45(1): 88-93. DOI: 10.12073/j.hjxb.20230204001

基于关键点检测方法的焊缝识别

Weld recognition based on key point detection method

  • 摘要: 为保证自动焊接的质量,提高焊缝识别的准确性和适应性,提出一种焊缝特征提取的关键点检测方法.基于卷积神经网络设计了焊缝特征提取网络,该网络通过卷积、池化操作提取焊缝特征.将来自深层的特征图进行上采样,最后将深层特征图和浅层特征图相融合,提高焊缝特征提取精度.输出焊缝图像的热力图来预测焊缝特征点位置,实现多种坡口焊缝的识别定位,且不需要非极大值抑制算法,提升了特征提取速度.采集不同的焊缝特征图像,进行网络模型训练.结果表明,焊缝特征点定位均方根误差为0.187 mm,网络模型在焊缝特征点识别任务中检测精度较高,而且适应性和泛化性较强,满足自动焊接的要求.

     

    Abstract: In order to ensure the quality of automatic welding and improve the accuracy and adaptability of weld identification, a key point detection method for weld feature extraction is proposed. A weld feature extraction network was designed based on the convolutional neural network. The network extracted weld feature by convolution and pool operation. The feature map from deep layer is sampled up, and then the feature map from deep layer and shallow layer are fused to improve the accuracy of weld feature extraction. The feature point position of weld seam is predicted by the thermal image of weld seam, and the recognition and location of many kinds of groove weld seam are realized, and eliminating the need for non-maximum suppression algorithm, which improves the feature extraction speed. The network model is trained by collecting different weld feature images. The experimental results show that the root mean square error of weld feature point location is 0.187 mm. The network model designed in this research has high detection accuracy in the weld feature point recognition task, and has strong adaptability and generalization, and meets the requirements of automatic welding.

     

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