基于RASTA - PLP算法的汉语重音检测研究

Zhang Long, Zhao Yunxue, Zhang Peng, Yan Ke, Zhang Wei
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引用次数: 5

摘要

口音是口语交际的重要组成部分,在口语交际中起着非常重要的作用。本文采用基于子段拼接信息的RASTA - PLP算法提取每个语音段的短时频谱特征进行重音处理。基于RASTA - PLP算法构建短时频谱特征集。选择朴素贝叶斯分类器对特征集进行建模。朴素贝叶斯是选择后验概率最大的类作为对象的类。这种分类方法充分利用了语音片段的相关语音特征。基于短时间谱的RASTA - PLP特征集在ASCCD和ASCCD (NOISEX92-white)上的口音检测准确率分别达到80.8%。实验结果表明,基于子段拼接特征的RASTA - PLP结构化方法可用于汉语口音检测研究。RASTA-PLP算法在ASSCD和ASSCD (NOISEX92-white)上具有鲁棒性。
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Chinese accent detection research based on RASTA - PLP algorithm
Accent is a critical important component of spoken communication, which plays a very important role in spoken communication. In this paper, we conduct accent by using RASTA - PLP algorithm to extract short-time spectrum features of each speech segment based on sub-segment splicing information. We build short-time spectrum feature sets based on RASTA - PLP algorithm. And we choose NaiveBayes classifier to model the feature sets. NaiveBayes is to choose the class with maximum posteriori probability as the object's class. This classification method makes full use of the related phonetic features of speech segment. Based on short-time spectrum of RASTA - PLP feature sets respectively achieve 80.8% accent detection accuracy on ASCCD and on ASCCD (NOISEX92-white). The experimental results indicate that based on sub-segment splicing feature structured method of RASTA - PLP can be used in Chinese accent detection study. RASTA-PLP algorithm is robust on ASSCD and on ASSCD (NOISEX92-white).
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