基于块像素计数和链码的缅甸文字招牌图像字符提取与识别

Kyi Pyar Zaw, Zin Mar Kyu
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引用次数: 3

摘要

本文提出了一种非常简单有效的方法,对手机摄像头拍摄的彩色自然招牌图像进行缅甸文的文本提取和识别。文本提取、线条分割、字符分割和识别是自然广告牌图像文本理解的重要步骤。在该系统中,首先对彩色增强进行处理,以克服各种光照条件。采用基于颜色阈值的滤波、基于宽高比的滤波、基于边界的滤波和基于区域面积的滤波四种滤波特性去除二值图像上的背景噪声。去除噪声后,进行线分割和字符分割。直线分割采用水平投影轮廓法,字符分割采用垂直投影轮廓法和边界框法。利用4×4基于块的像素密度和总链码、基于4行像素密度、基于4列像素密度和8个方向链码对整个字符图像和每个字符图像块进行识别。采用基于特征的模板匹配方法对该系统进行了研究,从150个摄像头拍摄的缅甸警示牌中正确提取2854个字符,字符识别准确率达到83.15%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Character Extraction and Recognition For Myanmar Script Signboard Images using Block based Pixel Count and Chain Codes
This paper presents a very simple and efficient method for the text extraction and recognition of the Myanmar text from color natural signboard images taken by a mobile phone camera. Text extraction, line segmentation, character segmentation and recognition are the important steps in text understanding from natural signboard images. In this system, the color enhancement is firstly processed to overcome various illumination conditions. Background noises on the binary images are removed by four filtering features such as color threshold based filtering, aspect ratio based filtering, boundary based filtering and region area based filtering. After removing the noise, line segmentation and character segmentation are done. Horizontal projection profile is used for line segmentation and vertical projection profile and bounding box methods are used to segment the characters. These connected component characters are recognized by using 4×4 blocks based pixel density and total chain codes, 4-rows based pixel density, 4-columns based pixel density and count of eight directions chain code on the whole character image and on each block of character image. This system is investigated by feature based approach of template matching, and 83.15% character recognition accuracy is achieved on 2854 correctly extracted characters from 150 camera-captured Myanmar warning signboards.
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