Adaptation of an address reading system to local mail streams

A. Brakensiek, J. Rottland, F. Wallhoff, G. Rigoll
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引用次数: 7

Abstract

A scheme for handwriting adaptation for post offices is described to improve recognition performance of German addresses. The recognition system is based on a tied-mixture hidden Markov model, whose parameters are updated using the expectation maximization technique, the maximum likelihood linear regression algorithm and a new discriminative adaptation technique, the scaled likelihood linear regression. Contrary to the usual approach of adapting a writer-independent system to a specific writer we propose to adapt the system to the writer-independent data of a specific post office. The resulting system for each post office yields up to 16% lower word recognition errors.
地址读取系统适应本地邮件流
为提高德语地址的识别性能,提出了一种邮局笔迹自适应方案。该识别系统基于一种绑定混合隐马尔可夫模型,该模型的参数更新采用期望最大化技术、最大似然线性回归算法和一种新的判别自适应技术——比例似然线性回归。与将独立于编写器的系统适应于特定编写器的通常方法相反,我们建议将系统适应于特定邮局的独立于编写器的数据。由此产生的每个邮局系统的单词识别错误率可降低16%。
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