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Farsi font recognition based on combination of Wavelet transform and Sobel-Robert operator features

机译:基于小波变换和Sobel-Robert运算符特征的波斯字体识别

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In this paper, a new method for Farsi font recognition based on combination of features is proposed. The features are extracted and combined from textures of size 128×128 using SRF and Wavelet transform. Wavelet and SRF are naturally different methods of feature extraction, so their errors have low correlation. In this condition, the combination of these features which are both applicable for texture recognition was expected to reduce total error and the experimental results approved this hypothesis. The proposed algorithm is tested on 21000 samples provided from 10 common Farsi fonts. In the method presented here, the font characteristics are extracted well and this is clear in the results. We achieved the recognition rate of 95.56% using MLP classifier which is 2.37% and 11.79% more than SRF and Wavelet transform respectively.
机译:提出了一种基于特征组合的波斯语字体识别新方法。使用SRF和小波变换从大小为128×128的纹理中提取并组合特征。小波和SRF是自然不同的特征提取方法,因此它们的误差相关性很低。在这种情况下,可以同时应用于纹理识别的这些功能的组合有望减少总误差,并且实验结果证实了这一假设。该算法在从10种常见波斯字体提供的21000个样本上进行了测试。在这里介绍的方法中,字体特征得到了很好的提取,结果很明显。使用MLP分类器,我们达到了95.56%的识别率,分别比SRF和Wavelet变换高了2.37%和11.79%。

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