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基于BP神经网络仪器显示自动识别方法
引用本文:宁志刚,汪仁煌.基于BP神经网络仪器显示自动识别方法[J].微计算机信息,2006,22(7):198-200.
作者姓名:宁志刚  汪仁煌
作者单位:510090,广东工业大学自动化学院;421001,南华大学电气工程学院
基金项目:广东省科技厅科技计划;广东省博士启动基金;湖南省教育厅科研项目
摘    要:介绍一种基于BP神经网络仪器显示自动识别方法,是在VC++编程环境下实现的。仪器显示图像预处理主要包括倾斜度调整、图像去噪、特征提取。采用Hough算法调整图像的倾斜度,采用一些特定的模板对图像进行降噪,采用投影法提取图像的特征。实验表明这种方法运行速度快、识别率高。这种方法具有一定的实用价值。

关 键 词:仪器显示  倾斜度调整  图像去噪  特征提取
文章编号:1008-0570(2006)03-1-0198-03
修稿时间:2005年7月16日

Automatic Recognition Method for Instrument Display Based on BP Neural Network
Ning,Zhigang,Wang,Renhuang.Automatic Recognition Method for Instrument Display Based on BP Neural Network[J].Control & Automation,2006,22(7):198-200.
Authors:Ning  Zhigang  Wang  Renhuang
Abstract:The paper introduces an automatic BP neural network approach for instrument display recognition, which is realized in Vi- sual C++ compiling environment. Pretreatment of instrument display image mainly includes slope angle adjustment, noise elimination, feature distilling. The Hough transform is used to detect and correct the skew angle of digital instrumental image. Some special ma- trix templates is used to eliminate noise. One image projection method is used to extract the features of seven- segment numbers im- ages. The experiment shows that the approach is a fast and high accuracy way of digital recognition. Therefore, the approach is feasi- ble for use in seven- segment numbers recognition, in practice.
Keywords:instrument display  slope angle adjustment  noise elimination  feature distilling
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