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Devanagari Ancient Character Recognition using HOG and DCT Features

机译:使用HOG和DCT功能的梵文古代字符识别

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摘要

In the present work, a system for recognition of ancient documents in Devanagari script is presented. Two feature extraction techniques, namely, DCT(Discrete Cosine Transformation) zigzag features and Histogram of oriented gradients are considered for extracting features of Devanagari ancient manuscripts. For recognition, three classification techniques, namely, SVM (Support Vector Machine), decision tree, and Naïve Bayes are used. A database for the experiments is collected from various libraries and museums. Using SVM classifier with RBF kernel, a recognition accuracy of 90.70% with DCT zigzag feature vector of length 100 has been reported. A recognition accuracy of 90.70% with a partitioning strategy of dataset (80% data as training data and the remaining 20% data as testing data) has been achieved.
机译:在目前的工作中,提出了一种识别梵文文字中古代文献的系统。为了提取梵文经古代手稿的特征,考虑了两种特征提取技术,即DCT(离散余弦变换)之字形特征和定向梯度直方图。为了识别,使用了三种分类技术,即SVM(支持向量机),决策树和朴素贝叶斯。从各个图书馆和博物馆收集用于实验的数据库。使用带有RBF内核的SVM分类器,已经报道了长度为100的DCT之字形特征向量的识别精度为90.70%。通过数据集的划分策略(80%的数据作为训练数据,其余20%的数据作为测试数据)实现了90.70%的识别精度。

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