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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Building a compact online MRF recognizer for large character set by structured dictionary representation and vector quantization technique
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Building a compact online MRF recognizer for large character set by structured dictionary representation and vector quantization technique

机译:通过结构化字典表示和矢量量化技术构建用于大型字符集的紧凑型在线MRF识别器

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摘要

This paper describes a method for building a compact online Markov random field (MRF) recognizer for large handwritten Japanese character set using structured dictionary representation and vector quantization (VQ) technique. The method splits character patterns into radicals, whose models by MRF are shared by different character classes such that a character model is constructed from the constituent radical models. Many distinct radicals are shared by many character classes with the result that the storage space of model dictionary can be saved. Moreover, in order to further compress the parameters, VQ technique to cluster parameter sequences of the mean vectors and covariance matrixes for MRF unary features and binary features as well as the transition probabilities of each state into groups was employed. By sharing a common parameter sequence for each group, the dictionary of the MRF recognizer can be greatly compressed without recognition accuracy loss.
机译:本文介绍了一种使用结构化字典表示法和矢量量化(VQ)技术为大型手写日语字符集构建紧凑型在线马尔可夫随机场(MRF)识别器的方法。该方法将字符模式分解为部首,其由MRF所建立的模型由不同的字符类别共享,从而从组成部首模型中构建了一个字符模型。许多字符类共享许多不同的部首,从而可以节省模型字典的存储空间。此外,为了进一步压缩参数,采用了VQ技术对MRF一元特征和二元特征的均值向量和协方差矩阵的参数序列以及每个状态到组的转移概率进行聚类。通过为每个组共享一个公共参数序列,可以大大压缩MRF识别器的字典,而不会降低识别精度。

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