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A hybrid method for unconstrained handwritten numeral recognition by combining structural and neural 'gas' classifiers

机译:结合结构和神经“气体”分类器的无限制手写数字识别的混合方法

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摘要

This paper presents a hybrid method for handwritten numeral recognition that combines two compensatory recognition algorithms by analysing their performance for several aspects. The skeleton-based structural recognition algorithm employed in this method is robust under distortion but sensitive to noise and flaws. On the other hand, the neural network classifier, which uses scaled binary images as features and the neural "gas" model for classification, is relatively immune to noise and flaws but sensitive to distortion. The different performances of the two algorithms for broken, connected or slanted numerals, and the measurement-level decision provided by the neural network are detected and combined with different strategies to develop matching rules for each recognition method. Five combination methods based on performance analysis are developed to meet different requirements. As the two algorithms have fairly compensatory properties, the proposed method improves the recognition rate and reliability by exploiting the advantages and avoiding the weaknesses of each classifier. The experimental results from a large set of data show the efficiency and robustness of the proposed method.
机译:本文提出了一种用于手写数字识别的混合方法,该方法通过分析两种补偿识别算法在多个方面的性能,将两种补偿识别算法结合在一起。该方法采用的基于骨架的结构识别算法在失真下具有鲁棒性,但对噪声和缺陷敏感。另一方面,使用缩放的二进制图像作为特征并使用神经“气体”模型进行分类的神经网络分类器相对不受噪声和缺陷的影响,但对变形敏感。检测两种算法对数字的折断,连接或倾斜的不同性能,以及由神经网络提供的测量级别决策,并将其与不同的策略结合以为每种识别方法制定匹配规则。开发了五种基于性能分析的组合方法以满足不同的需求。由于这两种算法具有相当的补偿特性,因此该方法通过充分利用各个分类器的优点,避免了每个分类器的缺点,提高了识别率和可靠性。来自大量数据的实验结果表明了该方法的有效性和鲁棒性。

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