Statistical and Similarity Features Based Recognition of Offline Characters

Deval Verma, Gaurav Verma, C. Tan, Wisetsri, Yannakorn Toprayoon, Thanyanant Chansongpol
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Abstract

This paper uses a blend of similarity and statistical based features for the recognition of offline alphabetic characters in noisy and noiseless environment. The complete representation of the characters is based on the combination of these two different families of features and recognition by different classifiers. The main strategy is to extract complementary similarity measure (CSM) as a feature vector and combined with grey level co-occurrence matrix (GLCM) features. A standard dataset is taken into consideration and recognition is done by artificial neural network (ANN), support vector machine (SVM), Naïve Bayes (NB) classifier and random forest (RF) classifier. The highest average recognition accuracy of all characters is recorded as 94.05% using RF in noiseless environment. In noisy environment, the highest accuracy is recorded as 75.8% by neural network. The analysis proves that the combination of feature works on various types of printed characters in noisy and noiseless environment irrespective of the font of characters.
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基于统计和相似特征的离线字符识别
本文采用相似度特征和统计特征相结合的方法对有噪声和无噪声环境下的离线字母字符进行识别。字符的完整表示是基于这两种不同的特征族的结合和不同分类器的识别。主要策略是提取互补相似测度(CSM)作为特征向量,并结合灰度共生矩阵(GLCM)特征。以标准数据集为对象,采用人工神经网络(ANN)、支持向量机(SVM)、Naïve贝叶斯(NB)分类器和随机森林(RF)分类器进行识别。在无噪声环境下,使用射频对所有字符的最高平均识别准确率为94.05%。在噪声环境下,神经网络的准确率最高,达到75.8%。分析表明,无论何种字体,在有噪声和无噪声环境下,特征组合对各种类型的印刷字符都有效。
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