基于语言的手印字符识别:一种利用时空信息特征的新方法

P. Sanguansat, P. Yanwit, P. Tangwiwatwong, W. Asdornwised, S. Jitapunkul
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引用次数: 4

摘要

提出了一种新的识别方法——领域相关的双语手印字符识别方法。我们实现了基于两个重要特征属性的两阶段识别系统,定义为空间和时间信息特征。所提出的空间信息特征(SIF)是离线字符的结构,用于区分泰语和英语字符。这些特征也可以称为显著特征(DF)。相比之下,时间信息特征(TIF)是使用我们提出的特征(称为起点到终点距离特征)和其他标准在线特征提取的字符片段。我们提出的TIF特征可以帮助我们解决一些泰语和英语字符中出现的歧义,这是传统特征无法解决的。在识别系统中,第一阶段是使用显著特征来完成语言分类任务,第二阶段是使用隐马尔可夫模型(HMM)作为最终分类器。在第一识别阶段使用语言分类的优势有两个方面。首先,降低了最终识别阶段的决策复杂度。第二,两种独立语言HMM的观察阶段比一种双语HMM的观察阶段更优化。从实验结果来看,语言分类识别准确率为99.31%,泰语和英语字符的识别准确率分别为91.67%和90.23%。因此,整体识别准确率为91.05%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Language-based hand-printed character recognition: a novel method using spatial and temporal informative features
We propose a new method for recognition - the domain-dependent bilingual hand-printed character recognition. We implemented two-stage recognition systems based on two important character properties, defined as spatial and temporal informative features. The proposed spatial informative features (SIF) are off-line characters' structures that are exploited in order to differentiate Thai from English characters. These features can also be called distinctive features (DF). In contrast, temporal informative features (TIF) are segments of characters extracted using our proposed features, called start-to-end point distance feature, and other standard on-line features. Our proposed TIF features help us to solve ambiguity occurred in several Thai and English character, which conventional features cannot resolve. In the recognition system, the first stage is performed the language classification task using distinctive features, while the second stage is using hidden Markov model (HMM) as the final classifier. The advantages of using language classification at the first recognition stage are two folds. First, the decision complexity at the final recognition stage can be reduced. Second, the observation stages of two independent language HMMs can be better optimized than one bilingual HMM. From the experimental results, language classification recognition accuracy is 99.31%, while the recognition accuracy of Thai and English characters are 91.67% and 90.23%, respectively. Hence, the overall recognition accuracy is 91.05%.
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