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A Neural Network-Hidden Markov model hybrid for laser etched characters recognition

机译:神经网络隐马尔可夫模型混合体用于激光蚀刻字符识别

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A recognition method of laser etched characters based on Hidden Markov models and Neural Network is applied, which the structural properties and the relation of metal label characters are analyzed in detail. The endings, three crossing points, four crossing points of the characters are extracted, and it is improved on the method of extraction of three crossing points. A neural network is used to estimate probabilities for the characters depended on the structural properties, then deriving the best word choice from a sequence of state transition. It is shown in test that the proposed method can be used to recognize the etched characters on metal label.
机译:运用基于隐马尔可夫模型和神经网络的激光蚀刻字符识别方法,详细分析了金属标签字符的结构特性和关系。提取了字符的结尾,三个交叉点,四个交叉点,并对三个交叉点的提取方法进行了改进。使用神经网络来估计取决于结构特性的字符的概率,然后从状态转换序列中得出最佳单词选择。测试表明,该方法可用于识别金属标签上的蚀刻字符。

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