模糊k近邻在音素识别中的应用

I. Fredj, K. Ouni
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引用次数: 5

摘要

在这项工作中,模糊kNN (FkNN)是标准kNN算法的替代方案,用于Timit音素识别。音素是构成语音的最小单位。因此,如果进行音素识别,可以实现有意义的单词和文本识别。因此,主要思想在于通过测量到其kNN的距离来分配数据音素的隶属度。FkNN计算数据音素之间的模糊距离,定义聚类的模糊性。从语音信号中提取与其一阶导数、二阶导数和能量系数相关的低频倒谱系数作为识别系统的输入。进行了清晰和模糊kNN的比较。实验表明,FkNN算法不仅具有显著的识别率,而且在某些方面可以取代隐马尔可夫模型(HMM)作为语音识别的参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy k-nearest neighbors applied to phoneme recognition
In this work, the Fuzzy kNN (FkNN), an alternative of the standard kNN algorithm, is used for Timit phoneme recognition. Phoneme is the smallest unit that composes speech. For this reason, if phoneme recognition is performed, it can achieve a significant word and text recognition. Thus, the main idea consists on assigning phoneme membership to the data phonemes by measuring the distance to its kNN. FkNN compute the fuzzy distances between the data phonemes that define the cluster fuzziness. Mel Frequency Cepstral Coefficients (MFCC) associated with their first and second derivatives and energy coefficient were extracted from the speech signals as an input of the recognition system. A comparison of a crisp and fuzzy kNN was performed. Experiments show that FkNN algorithm not only can lead to significant recognition rates, but also may supersede in some ways Hidden Markov Model (HMM) the reference of speech recognition.
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