短时谱特征的汉语重音检测方法研究  被引量:2

Chinese Accent Detection Method Research Based on Short-Time Spectrum Feature

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作  者:赵云雪[1] 张珑[1,2] 郑世杰[1] 

机构地区:[1]哈尔滨师范大学计算机科学与信息工程学院,哈尔滨150025 [2]哈尔滨工业大学计算机科学与技术学院,哈尔滨150001

出  处:《计算机科学与探索》2014年第9期1120-1128,共9页Journal of Frontiers of Computer Science and Technology

基  金:黑龙江省自然科学基金;黑龙江省哲学社会科学外语联合研究项目~~

摘  要:重音是语言交流中不可或缺的部分,在语言交流中扮演着非常重要的角色。为了验证基于听觉模型的短时谱特征集在汉语重音检测方法中的应用效果,使用MFCC(Mel frequency cepstrum coefficient)和RASTAPLP(relative spectra perceptual linear prediction)算法提取每个语音段的短时谱信息,分别构建了基于MFCC算法的短时谱特征集和基于RASTA-PLP算法的短时谱特征集;选用NaiveBayes分类器对这两类特征集进行建模,把具有最大后验概率的类作为该对象所属的类,这种分类方法充分利用了当前语音段的相关语音特性;基于MFCC的短时谱特征集和基于RASTA-PLP的短时谱特征集在ASCCD(annotated speech corpus of Chinese discourse)上能够分别得到82.1%和80.8%的汉语重音检测正确率。实验结果证明,基于MFCC的短时谱特征和基于RASTA-PLP的短时谱特征能用于汉语重音检测研究。Accent is a critically important component of spoken communication, and plays a very important role in spoken communication. In order to verify the effect of short-time spectrum feature set based on auditory model in Chinese accent detection method, this paper uses MFCC (Mel frequency cepstrum coefficient) algorithm and RASTA-PLP (relative spectra perceptual linear prediction) algorithm to extract each voice segment of short-time spectrum information, and builds short-time spectrum feature sets based on MFCC algorithm and RASTA-PLP algorithm. Then, it chooses NaiveBayes classifier to model the two feature sets, and chooses the classes with maximum a poste-riori probability as the object’s class. This classification method makes full use of the related phonetic features of speech segment. Short-time spectrum feature set based on MFCC and short-time spectrum feature set based on RASTA-PLP respectively achieve 82.1%and 80.8%accent detection accuracy on ASCCD (annotated speech corpus of Chi-nese discourse). The experimental results indicate that short-time spectrum features based on MFCC and short-time spectrum features based on RASTA-PLP can be used for Chinese accent detection research.

关 键 词:重音检测 Mel频率倒谱系数(MFCC) 相关谱感知线性预测(RASTA-PLP) 短时谱特征 

分 类 号:TP391[自动化与计算机技术—计算机应用技术]

 

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