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Feature selection based on genetic algorithms and support vector machines for handwritten similar Chinese characters recognition

机译:基于遗传算法的特征选择和支持手写类似汉字识别的传染媒介机器

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This paper presents a feature selection approach for handwritten similar Chinese characters recognition. The optimal features can be selected automatically by genetic algorithms from the representations in the form of elastic meshing based on wavelet transform. Three different combinations of binary support vector machines classifiers are discussed when multi-class classification problem must be dealt with. In our approach the fitness scores for different feature subset are derived from the cross-validation rate by using one-against-one strategy based support vector machines classifier with the Gaussian kernel function. The experiment results confirm the effectiveness and practicality of the approach.
机译:本文介绍了手写类似汉字识别的特征选择方法。可以通过基于小波变换的弹性网格形式的遗传算法自动选择最佳特征。当必须处理多级分类问题时,讨论了三个不同组合的二进制支持向量机分类器。在我们的方法中,不同特征子集的适合度分数通过使用具有高斯内核函数的基于一个策略的支持向量机分类来源于交叉验证率。实验结果证实了这种方法的有效性和实用性。

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