Studying electronic blood pressure monitor digital recognition algorithm based on computer vision and design

Yan Yuqi, Ye Wanting, Liu Xin, Xu Jie, Lian Lihua
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Abstract

This study proposed an intelligent algorithm based on digital image processing and character recognition to address the current situation in which the National Medical Products Administration promulgated the relevant regulations on the complete prohibition of the use of mercury sphygmomanometers in 2020 and the currently widely used electronic sphygmomanometers need to undergo regular verification and quality testing. The intelligent algorithm made it possible to automatically acquire the electronic sphygmomanometer indication value during quality assurance or verification. The images of the electronic sphygmomanometer were captured using a Raspberry Pi-connected video camera head; in the software development, automatic detection of the electronic sphygmomanometer's indication value was achieved by running the computer vision-based OpenCV library on the Raspberry Pi and utilizing image preprocessing techniques like scale transformation, grayscale conversion, Gaussian smoothing and edge detection, and character segmentation. The development of intelligent devices for the automatic verification of electronic sphygmomanometers has a technical foundation in the research and design of the digital recognition algorithm, and it has a certain reference value for character recognition of electronic instruments or the creation of automatic instrument indication value recording devices.
研究了基于计算机视觉的电子血压计数字识别算法与设计
针对国家药品监督管理局颁布2020年全面禁止使用汞质血压计的相关规定,以及目前广泛使用的电子血压计需要定期验证和质量检测的现状,本研究提出了一种基于数字图像处理和字符识别的智能算法。智能算法使电子血压计在质量保证或验证过程中自动获取指示值成为可能。电子血压计的图像是通过树莓派连接的摄像机头捕获的;在软件开发中,通过在树莓派上运行基于计算机视觉的OpenCV库,利用尺度变换、灰度转换、高斯平滑和边缘检测、字符分割等图像预处理技术,实现了电子血压计指示值的自动检测。电子血压计自动检定智能装置的研制在数字识别算法的研究与设计上具有一定的技术基础,对电子仪表的字符识别或自动仪表示值记录装置的创建具有一定的参考价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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