Narrow gap welding seam deflection correction study based on passive vision

Wang Zhang, Lizhe Fan, Yanbin Guo, Weihua Liu, Chao Ding
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Abstract

Purpose

The purpose of this study is to establish a method for accurately extracting torch and seam features. This will improve the quality of narrow gap welding. An adaptive deflection correction system based on passive light vision sensors was designed using the Halcon software from MVtec Germany as a platform.

Design/methodology/approach

This paper proposes an adaptive correction system for welding guns and seams divided into image calibration and feature extraction. In the image calibration method, the field of view distortion because of the position of the camera is resolved using image calibration techniques. In the feature extraction method, clear features of the weld gun and weld seam are accurately extracted after processing using algorithms such as impact filtering, subpixel (XLD), Gaussian Laplacian and sense region for the weld gun and weld seam. The gun and weld seam centers are accurately fitted using least squares. After calculating the deviation values, the error values are monitored, and error correction is achieved by programmable logic controller (PLC) control. Finally, experimental verification and analysis of the tracking errors are carried out.

Findings

The results show that the system achieves great results in dealing with camera aberrations. Weld gun features can be effectively and accurately identified. The difference between a scratch and a weld is effectively distinguished. The system accurately detects the center features of the torch and weld and controls the correction error to within 0.3mm.

Originality/value

An adaptive correction system based on a passive light vision sensor is designed which corrects the field-of-view distortion caused by the camera’s position deviation. Differences in features between scratches and welds are distinguished, and image features are effectively extracted. The final system weld error is controlled to 0.3 mm.

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基于被动视觉的窄间隙焊缝偏差校正研究
本研究的目的是建立一种准确提取焊枪和焊缝特征的方法。这将提高窄间隙焊接的质量。本文以德国 MVtec 公司的 Halcon 软件为平台,设计了一套基于被动光视觉传感器的自适应偏差校正系统。在图像校准方法中,利用图像校准技术解决了由于摄像机位置造成的视场失真问题。在特征提取方法中,使用冲击滤波、子像素(XLD)、高斯拉普拉斯和感知区域等算法对焊枪和焊缝进行处理后,准确提取焊枪和焊缝的清晰特征。使用最小二乘法精确拟合焊枪和焊缝中心。计算偏差值后,监测误差值,并通过可编程逻辑控制器 (PLC) 控制实现误差修正。最后,对跟踪误差进行了实验验证和分析。焊枪特征可以有效而准确地识别。划痕和焊缝之间的区别得到了有效区分。原创性/价值设计了一种基于被动光视觉传感器的自适应校正系统,可校正摄像头位置偏差造成的视场畸变。该系统可区分划痕和焊缝之间的特征差异,并有效提取图像特征。最终系统的焊接误差控制在 0.3 毫米以内。
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