Model length adaptation of an HMM based cursive word recognition system

M. Schambach
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引用次数: 33

Abstract

On the basis of a well accepted, HMM-based cursive script recognition system, an algorithm which automatically adapts the length of the models representing the letter writing variants is proposed. An average improvement in recognition performance of about 2.72 percent could be obtained. Two initialization methods for the algorithm have been tested, which show quite different behaviors; both prove to be useful in different application areas. To get a deeper insight into the functioning of the algorithm a method for the visualization of letter HMMs is developed. It shows the plausibility of most results, but also the limitations of the proposed method. However, these are mostly due to given restrictions of the training and recognition method of the underlying system.
基于HMM的草书词识别系统模型长度自适应
在一个公认的基于hmm的草书识别系统的基础上,提出了一种自动适应代表字母书写变体的模型长度的算法。识别性能的平均提高约为2.72%。对该算法的两种初始化方法进行了测试,结果表明两种方法的行为完全不同;两者都被证明在不同的应用领域是有用的。为了更深入地了解该算法的功能,开发了一种字母hmm的可视化方法。它表明了大多数结果的合理性,但也表明了所提出方法的局限性。然而,这主要是由于底层系统的训练和识别方法受到一定的限制。
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