基于MFCC的基于k-NN和LDA的口吃语音重复和延长识别

L. Chee, Ooi Chia Ai, M. Hariharan, S. Yaacob
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引用次数: 67

摘要

口吃是一种语言障碍,正常的语言流被出现的不流畅打断,比如重复、插话等等。在结巴的讲话中有很高比例的重复和延长,通常在句子的开头。因此,声学分析可以用于对口吃事件进行分类。本文描述了用特征提取算法将特定的口吃事件定位为口吃语音中的重复和延长。本文采用Mel频率倒谱系数(MFCC)特征提取方法,测试其在口吃语音中识别延长和重复的有效性。在这项工作中,使用了基于线性判别分析的分类器(LDA)和最近邻分类器(Λ-1Ν1Ν)这两个分类器,并使用了交叉验证来衡量分类器的性能。研究结果表明,MFCC和分类器(LDA和Λ-1Ν1Ν)可以用于口吃语音的重复和延长识别,平均准确率为90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MFCC based recognition of repetitions and prolongations in stuttered speech using k-NN and LDA
Stuttering is a speech disorder in which the normal flow of speech is disrupted by occurrences of dysfluencies, such as repetitions, interjection and so on. There are a high proportion of repetitions and prolongations in stuttered speech, usually at the beginning of sentences. Consequently, acoustic analysis can be used to classify the stuttered events. This paper describes particular stuttering events to be located as repetitions and prolongations in stuttered speech with feature extraction algorithm. The well known Mel Frequency Cepstral Coefficient (MFCC) feature extraction is implemented to test its effectiveness in recognizing prolongations and repetitions in a stuttered speech. In this work, two classifiers such as Linear Discriminant Analysis based classifier (LDA) and ¿-nearest neighbors (Λ-1Ν1Ν) are employed and ¿-fold cross-validation was applied to measure classifiers performances. The result of this work shows that the MFCC and classifiers (LDA and Λ-1Ν1Ν) can be used for recognition of repetitions and prolongations in stuttered speech with the average accuracy of 90%.
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