Selection of Optimum Mother Wavelet Function for Turkish Phonemes

E. Z. Engin, Özkan Arslan
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引用次数: 1

Abstract

In this paper, we propose the selection of most suitable mother wavelet function for Turkish phonemes using discrete wavelet transform. The determination of most similar mother wavelet function to the signal has been a challenge in speech processing. The optimum mother wavelet function for Turkish phonemes have been determined by using quantitative measures which are energy and Shannon entropy, information theoretic measures which are joint entropy, conditional entropy, mutual information, and relative entropy from wavelet coefficients of the phonemes. In this study, 101 potential functions were investigated to determine the most appropriate mother wavelet. Experimental results show that the most appropriate wavelet functions for /c/ and /s/ phonemes which are unvoiced fricatives have been found as Bi-orthogonal 3.9 and Bi-orthogonal 5.5, respectively. By considering all the results, it is seen that the Bi-orthogonal 3.1 and Discrete Meyer wavelet functions are the most suitable mother wavelets for all other phonemes.
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土耳其语音素最优母小波函数选择
本文提出了用离散小波变换选择最合适的土耳其语音素母小波函数的方法。确定与信号最相似的母小波函数一直是语音处理中的一个难题。从音素的小波系数出发,采用能量熵、香农熵等定量测度和联合熵、条件熵、互信息、相对熵等信息论测度,确定了土耳其语音素的最佳母小波函数。为了确定最合适的母小波,本研究考察了101个势函数。实验结果表明,对于/c/和/s/为不发音摩擦音的音素,最合适的小波函数分别为双正交3.9和双正交5.5。综合考虑所有结果,可以看出双正交3.1和离散Meyer小波函数是所有其他音素的最合适的母小波。
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