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基于CA-PnPNet的焊接接头类型与漏焊检测

陈海丽 郭汉壮 李江 高天成 刘英 张坤 王立伟 梁志敏

河北科技大学学报2026,Vol.47Issue(1):86-96,11.
河北科技大学学报2026,Vol.47Issue(1):86-96,11.DOI:10.7535/hbkd.2026yx01009

基于CA-PnPNet的焊接接头类型与漏焊检测

Welded joint type and lack-of-fusion detection based on CA-PnPNet

陈海丽 1郭汉壮 2李江 3高天成 1刘英 1张坤 2王立伟 1梁志敏1

作者信息

  • 1. 河北科技大学材料科学与工程学院,河北 石家庄 050018||河北省材料近净成形技术重点实验室,河北 石家庄 050018
  • 2. 河北科技大学信息科学与工程学院,河北 石家庄 050018
  • 3. 唐山松下产业机器有限公司,河北 唐山 063020
  • 折叠

摘要

Abstract

To address the limited 3D structural perception and insufficient feature discrimination in traditional welding joint classification and lack-of-fusion detection methods,this study proposed a 3D point cloud detection network that integrated geometric structure modeling with an attention mechanism,termed CA-PnPNet.First,the network was built upon the PointNet++framework,in which a point neighborhood processing in 3D(PnP3D)was integrated into multiple feature extraction stages to strengthen the modeling of local spatial geometric relationships.In addition,a channel attention module(CAM)was incorporated to adaptively emphasize key features by capturing semantic dependencies across channels.Finally,the collaborative integration of these two modules at different feature layers enabled unified enhancement of both local point cloud geometric representation and semantic feature expression,resulting in more comprehensive 3D structural characterization.To validate the effectiveness of the method,multiple sets of comparative experiments were conducted.The results demonstrate that CA-PnPNet achieves an accuracy of 97.7%in the welding point cloud classification task,outperforming the baseline model by 1.9%,while improving the inference speed from 33.3 FPS to 36.1 FPS.These results validate the superior accuracy and real-time performance of the proposed method.Overall,CA-PnPNet provides an effective technical reference for intelligent detection and industrial quality monitoring of complex welded structures.

关键词

计算机视觉/三维点云/焊接接头分类/漏焊检测/PointNet++/PnP3D

Key words

computer vision/3D point cloud/welding joint classification/lack-of-fusion detection/PointNet++/PnP3D

分类

信息技术与安全科学

引用本文复制引用

陈海丽,郭汉壮,李江,高天成,刘英,张坤,王立伟,梁志敏..基于CA-PnPNet的焊接接头类型与漏焊检测[J].河北科技大学学报,2026,47(1):86-96,11.

基金项目

国家自然科学基金(52475343) (52475343)

河北省自然科学基金(E2020208089,E2024208049,E2020208005) (E2020208089,E2024208049,E2020208005)

河北科技大学学报

1008-1542

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