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A machine vision algorithm for quality control inspection of gears

机译:一种机器视觉算法,用于齿轮质量控制检查

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Quality control has become a priority in the inspection processes of industrial manufacturing of gears. Due to the advancement of technology and the realizations of Industry 4.0, smart factories demand high precision and accuracy in the measurements and inspection of industrial gears. Machine vision technology provides image-based inspection and analysis for such demanding applications. With the use of software, sensors, cameras, and robot guidance, such integrated systems can be realized. The aim of this paper is to deploy an improved machine vision application to determine the precise measurement of industrial gears, at subpixel level, with the potential to improve quality control, reduce downtime, and optimize the inspection process. A machine vision application (Vision2D) has been developed to acquire and analyze captured images to implement the process of measurement and inspection. Firstly, a very minimum calibration error of 0.06 pixel was obtained after calibration. The calibrated vision system was verified by measuring a ground-truth sample gear in a Coordinate Measuring Machine (CMM), using the parameter generated as the nominal value of the outer diameter. A methodical study of the global uncertainty associated with the process is carried out in order to know better the admissible zone for accepting gears. After that, the proposed system analyzed twelve other samples with a nominal tolerance threshold of +/- 0.020 mm. Amongst the gears inspected, the Vision2D application identified eight gears which are accepted and four bad gears which are rejected. The inspection result demonstrates an improvement in the algorithm of the Vision2D system application when compared with the previous existing algorithms.
机译:质量控制已成为齿轮工业制造检验过程的优先事项。由于技术进步和行业4.0的实现,智能工厂在工业齿轮的测量和检查中需要高精度和准确性。机器视觉技术为这种苛刻的应用提供基于图像的检查和分析。随着软件,传感器,摄像机和机器人引导的使用,可以实现这种集成系统。本文的目的是部署改进的机器视觉应用,以确定工业齿轮的精确测量,在子像素水平,有可能改善质量控制,减少停机时间和优化检查过程。已经开发了机器视觉应用(Vision2D)来获取和分析捕获的图像以实现测量和检查过程。首先,校准后获得了0.06像素的最小校准误差。通过使用作为外径标称值产生的参数测量坐标测量机(CMM)中的地形样品齿轮来验证校准的视觉系统。进行了对与该过程相关的全局不确定性的方法研究,以便更好地了解接受齿轮的可允许区域。之后,所提出的系统分析了12个其他样品,标称公差阈值为+/- 0.020 mm。在检查的齿轮中,Vision2D应用程序确定了八个齿轮,并被拒绝的四个坏齿轮。与先前现有算法相比,检验结果展示了Vision2D系统应用程序的算法的改进。

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