基于归一化中心矩特征的英文字母字体识别

Aveen Jalal Mohammed, Hasan S. M. Al-Khaffaf
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引用次数: 1

摘要

光学字体识别是在光学字符识别之前或之后进行的重要过程。本文提出了一种字符图像英文字体识别系统。特征选择在字体识别中起着重要的作用;因此,我们在本研究中使用归一化中心矩(NCM)作为选择的特征。本研究与其他研究的不同之处在于,它尝试使用其他研究人员使用的另一种流行特征(距离轮廓特征),并将两者的结果进行比较。在训练和测试中使用支持向量机(SVM)方法。开发了一个提取两个特征并训练两个支持向量机模型的系统。基于三种英文字体27,620幅图像数据集的仿真结果表明,基于归一化中心矩的系统总体正确率为94.9%,而使用距离轮廓特征的系统总体正确率为94.82%。
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Font Recognition of English Letters Using Normalized Central Moments Features
Optical font recognition is an important process applied before or after optical character recognition. This paper presents a system for recognizing English fonts of character images. Feature selection plays a major role in recognizing the font; hence, we used normalized central moments (NCM) as the feature of choice in this study. What differentiates this study from others is the attempt to use another popular feature (distance profile features) used by other researchers and compare the results of the two. The support vector machine (SVM) method is used in training and testing. A system is developed that extracts the two features and trains two SVM models. Simulation results based on a dataset of 27,620 images belonging to three English fonts show that the proposed system can achieve an overall 94.9% correct recognition rate based on normalized central moments, while the system can achieve an overall 94.82% correct recognition rate when using distance profile features.
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