Weld Surface Imperfection Detection by 3D Reconstruction of Laser Displacement Sensing

Pengcheng Yang, Dan Hu, Congyi Wang, Yanxi Zhang, D. You, Xiangdong Gao, Nanfeng Zhang
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引用次数: 4

Abstract

It is of great significance to detect the weld surface to ensure welding quality. Aiming at the problem of weld surface defect detection and 3D reconstruction algorithm, a method of defect detection and three - dimensional reconstruction based on laser scanning 3D point cloud has been proposed. The method of BP neural network is used to filter the point cloud data obtained by laser displacement sensor scanning, and the result is qualitatively and quantitatively analyzed. The three-dimensional reconstruction model of pit defects on weld surface is established. The reconstructed error is within the allowable range. The experimental results show that applying BP neural network to weld defect detection can effectively reduce the complexity of 3D reconstruction and improve the accuracy of 3D reconstruction of weld surface.
激光位移传感三维重建焊缝表面缺陷检测
焊缝表面检测对保证焊接质量具有重要意义。针对焊接表面缺陷检测与三维重建算法问题,提出了一种基于激光扫描三维点云的缺陷检测与三维重建方法。采用BP神经网络的方法对激光位移传感器扫描得到的点云数据进行滤波,并对结果进行定性和定量分析。建立了焊缝表面凹坑缺陷的三维重建模型。重构误差在允许范围内。实验结果表明,将BP神经网络应用于焊缝缺陷检测,可以有效降低焊缝三维重建的复杂性,提高焊缝表面三维重建的精度。
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