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Recognition of speaker-independent isolated Persian digits using an enhanced vector quantization algorithm

机译:使用增强的矢量量化算法识别与说话人无关的孤立波斯数字

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Vector quantization (VQ) is a fast and simple classification algorithm that has been widely employed for the recognition of isolated spoken words. However, this algorithm and most of its improved versions fail to accurately distinguish words with similar vowels. The spoken pattern of digits/dow/ andoh/ (2 and 9 respectively) in Persian is a good example for this type of similarity. In this paper we have proposed an enhanced vector quantization algorithm in which the deterministic role of the short consonants at the beginning of the words is taken into account. In this algorithm an unknown vector is judged based on the classification results of two set of codebooks. The first set of codebooks is constructed by the initial portions of the words while the other set is constructed by the whole words. The performance of the proposed algorithm was experimentally verified against other VQ-based algorithms. While the overall performance of the proposed algorithm was above the others, in the case of similar words it could remarkably decrease the number of misclassification. This improvement was achieved by only a small increase in the computational load.
机译:矢量量化(VQ)是一种快速简单的分类算法,已广泛用于识别孤立的口头单词。但是,该算法及其大多数改进版本无法准确地区分具有类似元音的单词。波斯语中digits / dow /和/ noh /(分别为2和9)的语音模式是这种相似性的一个很好的例子。在本文中,我们提出了一种增强的矢量量化算法,其中考虑了短辅音在单词开头的确定性作用。在该算法中,基于两组密码本的分类结果来判断未知向量。第一组密码本由单词的初始部分构成,而另一组则由整个单词构成。相对于其他基于VQ的算法,实验验证了该算法的性能。虽然所提出算法的总体性能优于其他算法,但在类似词语的情况下,它可以显着减少错误分类的次数。仅通过少量增加计算量即可实现此改进。

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