A Robust Detector for Automated Welding Seam Tracking System

IF 1.7 4区 计算机科学 Q3 AUTOMATION & CONTROL SYSTEMS Journal of Dynamic Systems Measurement and Control-Transactions of the Asme Pub Date : 2021-07-01 DOI:10.1115/1.4049547
Yanbiao Zou, Mingquan Zhu, Xiangzhi Chen
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引用次数: 13

Abstract

Accurate locating of the weld seam under strong noise is the biggest challenge for automated welding. In this paper, we construct a robust seam detector on the framework of deep learning object detection algorithm. The representative object algorithm, a single shot multibox detector (SSD), is studied to establish the seam detector framework. The improved SSD is applied to seam detection. Under the SSD object detection framework, combined with the characteristics of the seam detection task, the multifeature combination network (MFCN) is proposed. The network comprehensively utilizes the local information and global information carried by the multilayer features to detect a weld seam and realizes the rapid and accurate detection of the weld seam. To solve the problem of single-frame seam image detection algorithm failure under continuous super-strong noise, the sequence image multifeature combination network (SMFCN) is proposed based on the MFCN detector. The recurrent neural network (RNN) is used to learn the temporal context information of convolutional features to accurately detect the seam under continuous super-noise. Experimental results show that the proposed seam detectors are extremely robust. The SMFCN can maintain extremely high detection accuracy under continuous super-strong noise. The welding results show that the laser vision seam tracking system using the SMFCN can ensure that the welding precision meets industrial requirements under a welding current of 150 A.
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一种用于焊缝自动跟踪系统的鲁棒检测器
在强噪声环境下准确定位焊缝是自动化焊接面临的最大挑战。本文在深度学习目标检测算法的框架上构造了一个鲁棒的接缝检测器。研究了代表性目标算法——单镜头多盒检测器(SSD),建立了焊缝检测器框架。改进后的SSD用于接缝检测。在SSD目标检测框架下,结合接缝检测任务的特点,提出了多特征组合网络(MFCN)。该网络综合利用多层特征所携带的局部信息和全局信息对焊缝进行检测,实现了对焊缝的快速、准确检测。为解决连续超强噪声下单帧拼接图像检测算法失效的问题,提出了基于序列图像多特征组合网络(SMFCN)的序列图像多特征组合网络。利用递归神经网络(RNN)学习卷积特征的时间上下文信息,在连续超噪声下准确检测焊缝。实验结果表明,所提出的焊缝探测器具有很强的鲁棒性。SMFCN在连续超强噪声下仍能保持极高的检测精度。焊接结果表明,在焊接电流为150 a的情况下,采用SMFCN的激光视觉焊缝跟踪系统可以保证焊接精度满足工业要求。
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来源期刊
CiteScore
3.90
自引率
11.80%
发文量
79
审稿时长
24.0 months
期刊介绍: The Journal of Dynamic Systems, Measurement, and Control publishes theoretical and applied original papers in the traditional areas implied by its name, as well as papers in interdisciplinary areas. Theoretical papers should present new theoretical developments and knowledge for controls of dynamical systems together with clear engineering motivation for the new theory. New theory or results that are only of mathematical interest without a clear engineering motivation or have a cursory relevance only are discouraged. "Application" is understood to include modeling, simulation of realistic systems, and corroboration of theory with emphasis on demonstrated practicality.
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