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Computer Vision Based Non-contact Surface Roughness Assessment Using Wavelet Transform and Response Surface Methodology

机译:基于计算机视觉的小波变换和响应面法非接触表面粗糙度评估

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摘要

This paper describes a new non-contact measurement approach in characterizing manufactured surfaces. Computer vision is applied to capture digital images of three types of anisotropic steel specimen surfaces from shaping, grinding, and polishing processes. Multiresolution wavelet decomposition is used to obtain signatures of surface profiles from the digital images. Relationships between these signatures and surface roughness parameters (Ra and Rq) are built by response surface methodology (RSM). The proposed models thus developed are suitable for predicting roughness in terms of the roughness parameters. Experimental results show that the proposed approach successfully correlates wavelet signals to Ra and Rq values. In addition, they also show repeatable gage capabilities. The proposed method is a good candidate for on-line, real-time surface roughness inspection when specimens of known surface roughness are available.
机译:本文介绍了一种新的非接触式测量方法,用于表征制造的表面。应用计算机视觉来捕获来自成形,研磨和抛光过程的三种类型的各向异性钢试样表面的数字图像。多分辨率小波分解用于从数字图像中获取表面轮廓的特征。这些标记和表面粗糙度参数(Ra和Rq)之间的关系是通过响应表面方法(RSM)建立的。这样开发的建议模型适用于根据粗糙度参数预测粗糙度。实验结果表明,该方法成功地将小波信号与Ra和Rq值相关。此外,它们还显示出可重复的量具功能。当可获得已知表面粗糙度的样品时,该方法是在线实时表面粗糙度检查的理想选择。

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