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Cursive-Character Script Recognition Using Toeplitz Model and Neural Networks

机译:使用Toeplitz模型和神经网络的草书字符脚本识别

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摘要

This paper presents a hybrid method to use both the idea of projection and Toeplitz Matrix approaches to describe the feature vectors of an image and hence identifying it. The method applies two different tools. The main one is Toeplitz forms and the second is Neural Networks. The image model considered in this work are some selected Arabic scripts. The letter is first projected on 12 axes, then the lengths of these axes are measured and afterwards for the sake of classification and recognition these lengths are compared with the ones in the data base. The method has proved its high efficiency upon the other known approaches. Toeplitz model has shown its successful role in improving the description of the image feature vectors and hence increasing the rate of recognition. The overall algorithm has reached a very low rate of misclassification. Both machine and hand written cases have been studied. In this paper, examples of handwritten scripts are considered.
机译:本文提出了一种混合方法,该方法同时使用投影的思想和Toeplitz矩阵方法来描述图像的特征向量并由此进行识别。该方法应用了两种不同的工具。主要的一种是Toeplitz形式,第二种是神经网络。本工作中考虑的图像模型是一些选定的阿拉伯文字。该字母首先投影在12个轴上,然后测量这些轴的长度,然后为了分类和识别,将这些长度与数据库中的长度进行比较。该方法已在其他已知方法上证明了其高效率。 Toeplitz模型在改善图像特征向量的描述并因此提高识别率方面已显示出成功的作用。整个算法的错误分类率非常低。机器和手写案例都已被研究。在本文中,将考虑手写脚本的示例。

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