基于树皮尺度上LPC语音能量和频谱的3阶多项式系数识别24个泰语语音元音

K. Songwatana, S. Sriratanapaprat, P. Kultap, K. Sittiprasert, N. Suktangman
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引用次数: 1

摘要

本文提出了一种泰语元音识别方法。泰语由9个短的未混合元音组成(a, i,ω,u, o, e, ε, γ, [unk]);9纯粹的长元音(aa, ii,ωω,uu, oo, ee,£εε,γγ,[unk] [unk]);3个短混合元音(ia, ωa, ua);还有3个长混合元音(i:a:, ω:a:, u:a:)。我们提出了三阶段决策:第一步以信号能量的三阶多项式回归系数作为特征集,以5-NN作为分类方法,区分长、短元音;step2以18个临界频带强度为特征集,以9- nn为分类方法,将每个语音段(帧)划分为9个基本元音;最后步骤3通过阈值法判断每帧是否包含混合或未混合元音。该方法与传统语音识别的不同之处在于,该方法中的决策是针对每一帧进行的,而传统语音识别则是针对构成单词或句子的一系列帧进行最佳决策。将该算法应用于3024个男性和女性受试者的语音样本进行评估。算法的每一步都是依次求值的。
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Recognition of 24 Thai spoken Vowels Using the coefficients of 3rdOrder Polynomial Regression on the Voice Energy and Spectrum of LPC on the Bark Scale
This paper presents a vowel recognition for Thai spoken language. The Thai language consists of 9 short unmixed vowels (a, i,ω,u, o, e, ε, γ, [unk]); 9 long unmixed vowels (aa, ii, ωω, uu, oo, ee, £ εε, γγ, [unk][unk]); 3 short mixed vowels (ia, ωa, ua); and 3 long mixed vowels (i:a:, ω:a:, u:a:). We proposed uses 3-stage decision making: step 1 distinguishes long and short vowels using coefficients of third order polynomial regression of signal energy as features set and 5-NN as classification method; step 2 classifies each voice segment (frame) into 9 basic vowels using 18 critical band intensities as feature set and 9-NN as classification method; finally step 3 decides whether each frame contains mixed or unmixed vowel via thresholding method. This solution is different from the conventional speech recognition mainly because decision making in this method is done for each frame, while conventional speech recognition chooses the best decision for a sequence of frames forming a word or a sentence. Evaluation is done by applying the algorithm to 3024 voice samples of male and female subjects. Each step of the algorithm is evaluated successively.
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