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Spiral recognition methodology and its application for recognition of Chinese bank checks

机译:螺旋识别方法及其在中国银行支票识别中的应用

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This paper presents the spiral recognition methodology with its application in unconstrained handwritten Chinese legal amount recognition in a practical environment of a CheckReader/spl trade/. This paper first describes the failed application of neural network - hidden Markov model hybrid recognizer on Chinese bank check legal amount recognition, and explains the reasons for the failure: the neural network - hidden Markov model hybrid recognizer cannot handle the complexity in the training for Chinese legal amounts. Then a spiral recognition methodology is presented. This methodology enables the system to increase its recognition power (both the recognition rate and the number of recognized characters) during the training iterations. Some experiments were done to show that the spiral recognition methodology has a high performance in the recognition of unconstrained handwritten Chinese legal amounts. The recognition rate at the character level is 93.5%, and the recognition rate at the legal amount level is 60%. Combined with the recognition of courtesy amount, the overall error rate is less than 1%.
机译:本文介绍了螺旋识别方法及其在CheckReader / spl trade /的实际环境中在不受约束的手写中文合法金额识别中的应用。本文首先介绍了神经网络-隐马尔可夫模型混合识别器在中国银行支票合法金额识别中的失败应用,并解释了失败的原因:神经网络-隐马尔可夫模型混合识别器无法处理中文培训中的复杂性合法金额。然后提出了一种螺旋识别方法。这种方法使系统能够在训练迭代过程中提高其识别能力(识别率和识别字符数)。进行了一些实验,表明螺旋识别方法在识别不受约束的手写中国法定金额方面具有很高的性能。字符级别的识别率为93.5%,合法金额级别的识别率为60%。结合礼貌金额的确认,总体错误率小于1%。

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