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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >An HMM-based approach for off-line unconstrained handwritten word modeling and recognition
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An HMM-based approach for off-line unconstrained handwritten word modeling and recognition

机译:基于HMM的离线无约束手写单词建模和识别方法

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摘要

Describes a hidden Markov model-based approach designed to recognize off-line unconstrained handwritten words for large vocabularies. After preprocessing, a word image is segmented into letters or pseudoletters and represented by two feature sequences of equal length, each consisting of an alternating sequence of shape-symbols and segmentation-symbols, which are both explicitly modeled. The word model is made up of the concatenation of appropriate letter models consisting of elementary HMMs and an HMM-based interpolation technique is used to optimally combine the two feature sets. Two rejection mechanisms are considered depending on whether or not the word image is guaranteed to belong to the lexicon. Experiments carried out on real-life data show that the proposed approach can be successfully used for handwritten word recognition.
机译:描述了一种基于隐马尔可夫模型的隐藏方法,该方法旨在识别大型词汇的离线无约束手写单词。在预处理之后,将单词图像分割为字母或伪字母,并用两个等长的特征序列表示,每个特征序列均由形状符号和分段符号的交替序列组成,这两个序列均已明确建模。单词模型由适当的字母模型(由基本HMM组成)的串联组成,并且基于HMM的插值技术用于最佳地组合两个特征集。根据单词图像是否被保证属于词典,考虑了两种拒绝机制。对现实生活中的数据进行的实验表明,该方法可成功用于手写单词识别。

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