汤鹏, 刘毅, 魏宏光, 董秀芬, 严国斌, 张迎宾, 袁亚君, 王增光, 范亚南, 马鹏阁. 基于Mask-RCNN海上升压站数字式仪表读数的自动识别算法[J]. 红外与激光工程, 2021, 50(S2): 20211057. DOI: 10.3788/IRLA20211057
引用本文: 汤鹏, 刘毅, 魏宏光, 董秀芬, 严国斌, 张迎宾, 袁亚君, 王增光, 范亚南, 马鹏阁. 基于Mask-RCNN海上升压站数字式仪表读数的自动识别算法[J]. 红外与激光工程, 2021, 50(S2): 20211057. DOI: 10.3788/IRLA20211057
Tang Peng, Liu Yi, Wei Hongguang, Dong Xiufen, Yan Guobin, Zhang Yingbin, Yuan Yajun, Wang Zengguang, Fan Yanan, Ma Pengge. Automatic recognition algorithm of digital instrument reading in offshore booster station based on Mask-RCNN[J]. Infrared and Laser Engineering, 2021, 50(S2): 20211057. DOI: 10.3788/IRLA20211057
Citation: Tang Peng, Liu Yi, Wei Hongguang, Dong Xiufen, Yan Guobin, Zhang Yingbin, Yuan Yajun, Wang Zengguang, Fan Yanan, Ma Pengge. Automatic recognition algorithm of digital instrument reading in offshore booster station based on Mask-RCNN[J]. Infrared and Laser Engineering, 2021, 50(S2): 20211057. DOI: 10.3788/IRLA20211057

基于Mask-RCNN海上升压站数字式仪表读数的自动识别算法

Automatic recognition algorithm of digital instrument reading in offshore booster station based on Mask-RCNN

  • 摘要: 海上升压站采用挂轨机器人开展巡检作业,利用机器视觉手段自动识别数字式仪表读数,替代人工记录。提出了一种基于 Mask-RCNN深度学习方法的数字仪表读数自动识别算法。将不同类型的数字仪表原始图像制作成数据集,利用深度学习算法进行训练,根据损失函数变化曲线对算法进行参数优化得到训练后的模型,再进行数字仪表图像的识别分析。采用灰度世界算法和霍夫变换等算法进行图像预处理,可有效改善数字识别的准确度。最后,实验对比了YOLOv3和Mask-RCNN深度学习算法的识别性能,结果表明前者具有较高的检测速度,后者具有更高的准确率。后者的识别率为99.52%,满足海上升压站远程监控对数字仪表读数正确率高的要求。

     

    Abstract: The offshore booster station adopts the rail hanging robot to carry out patrol inspection, and the machine vision method is used to automatically identify the digital instrument reading instead of manual recording. An automatic recognition algorithm of digital instrument reading based on Mask-RCNN deep learning method was presented. The original images of different types of digital instruments were made into data sets, trained by deep learning algorithm, the parameters of the algorithm were optimized according to the change curve of loss function, the trained model was obtained, and then the digital instrument images were recognized and analyzed. The gray world algorithm and Hough transform were used for image preprocessing, which can effectively improve the accuracy of digital recognition. Finally, the recognition performance of YOLOv3 and Mask-RCNN deep learning algorithm was compared in the experiment. The results show that the former has higher detection speed and the latter has higher accuracy. The recognition rate of the latter is 99.52%, it meets the requirement that remote monitoring of offshore booster station requires high accuracy of digital instrument reading.

     

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