基于先验知识的弱焊接目标识别

Hongbin Ma, Yi Xu, Jie Liu
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引用次数: 0

摘要

焊接技术广泛应用于许多制造业。由于焊接质量不稳定和各种噪声的存在,焊缝是弱目标。提出了一种以焊缝为中心的弱目标识别新方法,有助于在复杂环境下对焊缝进行自动跟踪。我们首先在焊缝上用“外框”和“斜面”重新标记数据。然后设计了一种基于先验知识和YOLOv5识别算法的识别框架。对多种环境下的焊缝图像进行了训练,并对结果进行了比较。结果表明,该方法在查准率和查全率上均优于传统方法。
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Weak Weld-target Recognition Based on Prior Knowledge
The welding technology is widely used in many manufacturing industries. The welding seams are weak targets due to unstable welding quality and the various kinds of noises. This article proposed a new method of weak-target recognition focus on welding seams, which helps to automatically track the welding seam in complex enviroment. We first relabel the data with “outer boxes” and “slopes” on the welding seam. Then we design a new recognition framework based on prior knowledge and YOLOv5 recognition algorithm. We trained weld images in many kinds of enviroment and compared the results. It shown that our method exceed the tradional method on both precision and recall.
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