Arabic Handwriting Texture Analysis for Writer Identification Using the DWT-Lifting Scheme

S. Gazzah, N. Amara
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引用次数: 46

Abstract

In this paper, we present an approach for writer identification using off-line Arabic handwriting. The proposed method explores the handwriting texture analysis by 2D discrete wavelet transforms using lifting scheme. A comparative evaluation between textural features extracted by 9 different wavelet transform functions was done. A modular multilayer perceptron classifier was used. Experiments have shown that writer identification accuracies reach best performance levels with an average rate of 95.68%. Experiments have been carried out using a database of 180 text samples. The chosen text was made to guarantee the involvement of the various internal shapes and letter locations within an Arabic subword.
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基于dwt提升方案的阿拉伯笔迹纹理分析
在本文中,我们提出了一种使用离线阿拉伯笔迹的作家识别方法。提出了一种基于二维离散小波变换的手写体纹理分析方法。对9种不同小波变换函数提取的纹理特征进行了对比评价。采用模块化多层感知器分类器。实验表明,作者识别准确率达到了最佳性能水平,平均准确率为95.68%。实验使用了一个包含180个文本样本的数据库。所选择的文本是为了保证各种内部形状和字母位置在阿拉伯语子词的参与。
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