Measurement error detection method of electric energy meter based on machine vision

Zhen Gu, Da-rong Chen, J. Wang, Chen Dai, Gewei Zhuang
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Abstract

Due to the slow response and poor accuracy of traditional measurement error detection of the electric energy meter, the measurement error detection method of electric energy meter based on machine vision is studied. The minimum error method is used to segment the image threshold to form a binary image. The morphological refinement method is used to extract the image edge contour, combined with machine vision to refine the edge pixels, to achieve the measurement error detection of the instrument. The experimental results show that using the error detection method of machine vision, the detection results are consistent with the error detection results set by the system and the trend is the same. The accuracy also meets the requirements of relevant regulations, which improves the accuracy of electric energy meter measurement.
基于机器视觉的电能表测量误差检测方法
针对传统电能表测量误差检测响应慢、精度差的问题,研究了基于机器视觉的电能表测量误差检测方法。采用最小误差法对图像阈值进行分割,形成二值图像。采用形态学细化方法提取图像边缘轮廓,结合机器视觉对边缘像素进行细化,实现仪器的测量误差检测。实验结果表明,采用机器视觉的误差检测方法,检测结果与系统设置的误差检测结果一致,趋势一致。精度也符合相关规定的要求,提高了电能表计量的精度。
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