一种基于序列部分图像尺寸特征的高精度视觉测量方法

Zhisheng Zhang, Boxia He, Min Dai, Jinfei Shi
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引用次数: 7

摘要

视觉测量由于具有连续性、非接触性和非破坏性等优点,已成为尺寸测量的一种创新方法。为了实现大型机械零件的高精度视觉测量,提出了一种基于序列部分图像尺寸特征的视觉测量方法。为了克服两幅连续部分图像之间相对旋转产生的相应问题,首先采用了基于纹理特征的校正方法。然后,分析了零件图像边缘的过渡分布模式及其对测量精度的影响。为了消除这些影响,提出了一种边缘像素补偿方法,有效地提高了测量精度。最后,通过一个案例研究来证明所提出方法的分析过程和有效性。实验表明,采用序列图像测量方法测量大尺寸直边零件的相对误差小于0.012%。测量精度满足精密测量的需要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A high-precision vision measurement method based on dimension characteristics of sequential partial images
Due to the advantages of continuity, non-contact and non-destructiveness, vision measurement has become an innovative method in dimension measurement. To realize the high-precision vision measurement for large scale machine parts, a new vision measurement method based on dimension characteristics of sequential partial images is proposed. To overcome the corresponding problems arising from the relative rotation between two sequential partial images, a rectifying method based on texture features is used at the first step. Then, the transitional distribution modality of part image edges and its effects on measurement precision are analyzed. To get rid of the effects, a method of edge-pixel compensation is put forward, which availably improve measurement precision. Finally, a case study is provided to demonstrate the analysis procedures and effectiveness of the proposed methodology. The experiments show that the relative error is less than 0.012% using the sequential image measurement method to gauge large scale straight-edge parts. The measurement precision meets the need of the precise measurement .
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