A Deep Convolutional Neural Network-Based Method for Self-Piercing Rivet Joint Defect Detection

Author:

Zhao Lun1,Lin Sen1,Pan YunLong1,Wang HaiBo1,Abbas Zeshan1,Guo ZiXin1,Huo XiaoLe1,Wang Sen2

Affiliation:

1. Shenzhen Polytechnic Institute of Intelligent Manufacturing Technology, , Shenzhen 518055 , China

2. Kunming University of Science and Technology Faculty of Mechanical and Electrical Engineering, , Kunming 650500 , China

Abstract

Abstract The self-pierce riveting process for alloy materials has a wide range of applications in the automotive manufacturing industry. This will not only affect the operation performance but also cause accidents in severe cases when there are defects in the riveted parts. A deep learning detection model is proposed that integrates atrous convolution and dynamic convolution to identify defects of self-piercing riveting parts efficiently to overcome the problem in quality inspection after the body self-piercing riveting process. First, a backbone network for extracting riveting defect features is constructed based on the ResNet network. Second, the center area of each riveting defect is located preferentially by the center point detection algorithm. Finally, the bounding box of riveting defects is regressed to achieve defect detection based on this central region. Among them, atrous convolution is used in the external network to increase the receptive field of the model, which combined with an active convolution so that a dynamic atrous convolution module is designed. This module is used to enhance the correlation between feature points of individual pixel in the image, which helps to identify defects with incomplete image edges and suppress background interference. Ablation experiments show that the proposed method achieves the highest accuracy of 96.3%, which is 3.9% higher than the original method. It is found that the proposed method is less affected by the background interference from the qualitative comparison. Moreover, it can also effectively identify the riveting defects on the surface of each area.

Publisher

ASME International

Subject

Industrial and Manufacturing Engineering,Computer Graphics and Computer-Aided Design,Computer Science Applications,Software

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