基于多传感器信息融合的焊缝跟踪偏差提取

Weld seam tracking deviation extraction based on multi-sensor information fusion

  • 摘要:
    目的 旨在研究基于双目视觉传感器和激光位移传感器信息融合的焊缝跟踪偏差提取机理和跟踪精度提升方法。
    方法 通过理论和仿真相结合的方法,针对因焊缝自动跟踪过程受干扰因素多,单一传感器信息获取可靠性低、容错性差导致焊缝跟踪精度低的问题,以两类传感器融合机理为基础,探究提高基于双目视觉传感器和激光位移传感器信息融合的焊缝跟踪偏差提取方法。首先,通过双目视觉传感器和激光位移传感器分别获取焊缝的位置信息;然后,基于霍夫变换进行焊缝图像关键位置特征点提取;最后,基于改进的自适应加权方法对两类传感器获得的焊缝跟踪信息进行融合,得到最终的焊缝跟踪偏差信息。
    结果 研究结果表明,基于双目视觉传感器和激光位移传感器的信息融合方法的焊缝跟踪偏差能够控制在合理的范围内。
    结论 因此,基于霍夫变换和自适应加权的传感器焊缝信息融合方法能够有效地提高焊缝跟踪的信息获取精度。

     

    Abstract: Objective The aim is to study the mechanism of extracting weld seam tracking deviation and the method of improving tracking accuracy based on the fusion of binocular vision sensors and laser displacement sensors. Methods By combining theory and simulation, this study aims to address the problem of low accuracy in weld seam tracking caused by multiple interference factors, low reliability and fault tolerance of single sensor information acquisition during automatic weld seam tracking. Based on the fusion mechanism of two types of sensors, this study explores ways to improve the deviation extraction method for weld seam tracking based on the fusion of binocular vision sensors and laser displacement sensors. Firstly, position information of weld seam is obtained through binocular vision sensors and laser displacement sensors respectively. Then, based on Hough transform, key position feature points are extracted from weld seam image. Finally, based on the improved adaptive weighting method, weld seam tracking information obtained from two types of sensors is fused to obtain the final weld seam tracking deviation information. Results The research results indicate that welding seam tracking deviation based on information fusion method of binocular vision sensors and laser displacement sensors can be controlled within a reasonable range. Conclusion Therefore, sensor weld seam information fusion method based on Hough transform and adaptive weighting can effectively improve information acquisition accuracy of weld seam tracking.

     

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