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Off-Line Handwritten Character Recognition System Using Support Vector Machine

机译:支持向量机的离线手写字符识别系统

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Selection of classifiers and feature extraction methods has a prime role in achieving best possible classification accuracy in character recognition system. Issues of character recognition system related to choice of classifiers and feature extraction methods can be resolved through these objectives. In this proposed work an efficient Support Vector Machine based off-line handwritten character recognition system has been developed. The experiments have been performed using well known standard database acquired from CEDAR, also seven different approaches of feature extraction techniques have been proposed to construct the final feature vector. It is evident from the experimental results that the performance of Support Vector Machine outperforms other state of art techniques reported in literature.
机译:分类器的选择和特征提取方法在实现字符识别系统中可能的最佳分类精度方面起着主要作用。通过这些目标可以解决与分类器选择和特征提取方法有关的字符识别系统问题。在这项拟议的工作中,已经开发了一种有效的基于支持向量机的离线手写字符识别系统。实验是使用从CEDAR获得的众所周知的标准数据库进行的,还提出了七种不同的特征提取技术方法来构建最终的特征向量。从实验结果可以明显看出,支持向量机的性能优于文献中报道的其他现有技术。

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