面向离线Odia手写体识别的角对称轴星座模型

Pyari mohan Jena, S. Nayak
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引用次数: 3

摘要

光学字符识别是图像处理领域的新兴研究课题之一,在模式识别中有着广泛的应用领域。奥迪邦手抄本是最受关注的研究领域,因为它是印度奥里萨邦最古老和最受欢迎的语言。Odia字符通常是手写体,一般由扫描仪占用成机读形式。在这方面,针对不同类型的语言已经发展出了几种识别技术,但汉字的书写模式就像曲线的样子;因此,识别难度较大。本文提出了一种基于不同角度对称轴特征提取技术的汉字识别新方法,该方法具有较高的识别精度。该经验模型在每个骨架化的人物图像上生成一个基于角度的独特边界点。这些点相互连接,以提取行和列对称轴。我们分别提取了图像中心到对称轴中点的平均行距、平均行角、平均列距和平均列角的特征矩阵。该系统对随机森林(RF)分类器和支持向量机的特征矩阵进行了10次验证。我们考虑了包含200个图像的标准数据库,每个图像有47个Odia字符和10个Odia数字进行模拟。正如我们所注意到的,SVM和RF的模拟结果在NIT Rourkela Odia字符数据库上的准确率为96.3%和98.2%,在ISI Kolkata Odia数值数据库上的准确率为88.9%和93.6%。
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Angular Symmetric Axis Constellation Model for Off-line Odia Handwritten Characters Recognition
Optical character recognition is one of the emerging research topics in the field of image processing, and it has extensive area of application in pattern recognition. Odia handwritten script is the most research concern area because it has eldest and most likable language in the state of odisha, India. Odia character is a usually handwritten, which was generally occupied by scanner into machine readable form. In this regard several recognition technique have been evolved for variance kind of languages but writing pattern of odia character is just like as curve appearance; Hence it is more difficult for recognition. In this article we have presented the novel approach for Odia character recognition based on the different angle based symmetric axis feature extraction technique which gives high accuracy of recognition pattern. This empirical model generates a unique angle based boundary points on every skeletonised character images. These points are interconnected with each other in order to extract row and column symmetry axis. We extracted feature matrix having mean distance of row, mean angle of row, mean distance of column and mean angle of column from centre of the image to midpoint of the symmetric axis respectively. The system uses a 10 fold validation to the random forest (RF) classifier and SVM for feature matrix. We have considered the standard database on 200 images having each of 47 Odia character and 10 Odia numeric for simulation. As we have noted outcome of simulation of SVM and RF yields 96.3% and 98.2% accuracy rate on NIT Rourkela Odia character database and 88.9% and 93.6% from ISI Kolkata Odia numerical database.
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