基于深度学习的指针仪表识别算法

Xin Zhang, X. Dang, Qishen Lv, Shungui Liu
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引用次数: 14

摘要

为了建设智能化、无人化、管理化的变电站,变电站逐步采用巡检机器人代替人工。但在检测过程中,指针式电表的自动识别始终存在识别精度不高、易受光照变化影响的问题。本文研究了指针仪表的识别问题。系统研究了复杂环境下的仪器检测与定位算法、指针与仪器刻度拟合方法。提出了一种适用于智能变电站巡检机器人的指针仪表识别算法。利用深度学习的定位功能,采用基于Faster R-CNN的仪器分类算法对电压表、电流表和数字表三种表进行分类。对定位后的指针仪表图像进行图像处理,如倾斜校正、提取比例尺段、指针线段、线段拟合、修复默认刻度标记等操作,计算出更准确的指针读数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Pointer Meter Recognition Algorithm Based on Deep Learning
In order to build an intelligent, unmanned and managed substation, the substation gradually adopts inspection robots instead of manual work. However, during the inspection process, the automatic identification of the pointer type meter always has the problem that the recognition accuracy is not high and is susceptible to illumination changes. In this paper, the problem of pointer instrument identification is studied. The method of instrument detection and localization algorithm, pointer and instrument scale fitting in complex environment is studied systematically. A pointer meter identification algorithm suitable for intelligent substation inspection robot is proposed. Using the positioning function of deep learning, the instrument classification algorithm based on Faster R-CNN is used to classify three types of tables: voltmeter, ammeter and digital table. Image processing of the positioned pointer meter image, such as tilt correction, extraction of scale segments, pointer line segments, line fitting, repairing the default tick marks, etc. is operated to calculate a more accurate pointer reading.
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