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Off-line recognition of handwritten middle age Persian characters using moment

机译:使用矩离线识别手写的中古波斯文字

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摘要

In this paper, the performance of several moment invariant features combined with various classification methods for the recognition of middle age Persian manuscripts is presented. Specifically, Legendre moments (order 2 to 12), Zernike and pseudo-Zernike moments (order 2 to 15), and the set of invariant moments (?1, ?2, ..., ?7) are used as features. These features are computed from four versions of character images; (1) grayscale character images (Set A), (2) semithresholded character images (Set B), (3) binarized character images (Set C), (4) character skeleton (Set D). For classification, we have used the minimum Mean Distance (MMD), k-nearest neighbor (KNN), and Parzen methods. The experiment yielded a 2.86% error rate (97.14% classification rate) with pseudo-Zernike moments on the semithresholded character images (set B).
机译:本文介绍了几种不变矩特征与各种分类方法相结合对中年波斯手稿的识别性能。具体地,使用勒让德雷矩(2至12阶),泽尼克和伪泽尼克矩(2至15阶)以及不变矩集合(θ1,θ2,...,θ7)作为特征。这些特征是根据字符图像的四个版本计算得出的。 (1)灰度字符图像(A组),(2)半阈值字符图像(B组),(3)二值化字符图像(C组),(4)字符骨架(D组)。对于分类,我们使用了最小平均距离(MMD),k最近邻(KNN)和Parzen方法。实验在半阈值字符图像(B组)上使用伪Zernike矩产生了2.86%的错误率(97.14%的分类率)。

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