Welding Seam Recognition Technology of Welding Robot Based on A Novel Multi-Path Neural Network Algorithm

Chenyang Liu, Xiangqian Chang, Zhiming Cao, Dan Xu, Hongjie Yang, Zhihao Su
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Abstract

Robot welding technology includes independent planning, welding seam position detection, automatic welding seam tracking, etc. Welding seam recognition is a very important link. Traditional algorithms are far inferior to artificial intelligence algorithms in the welding seam recognition. This paper proposes a novel multi-path neural network algorithm, which performs well in the self-collected welding seam recognition data set called WL_HIST. The accuracy of welding seam recognition is as high as 95.3%, which is much higher than 65.3% of the traditional HOG manual feature extraction algorithm. The results show that the deep learning algorithm has a significant and outstanding performance in the welding robot recognition technology.
基于新型多路径神经网络算法的焊接机器人焊缝识别技术
机器人焊接技术包括自主规划、焊缝位置检测、焊缝自动跟踪等。焊缝识别是一个非常重要的环节。传统算法在焊缝识别方面远不如人工智能算法。本文提出了一种新的多路径神经网络算法,该算法在自采集的焊缝识别数据集WL_HIST中表现良好。焊缝识别准确率高达95.3%,远高于传统HOG人工特征提取算法的65.3%。结果表明,深度学习算法在焊接机器人识别技术中具有显著而突出的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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