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An Optimized Cepstral Feature Selection method for Dysfluencies Classification using Tamil Speech Dataset

机译:基于泰米尔语语音数据集的流失分类的最佳倒谱特征选择方法

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Speech is the most important and indispensable mode of communication between humans. In communication, the continuous flow of speech gets affected due to the interruption of emotional, panic and psychological factors that cause syllable or word repetition, prolongation and interjection. Speech dysfluency is a primary challenge for speech pathologist to isolate the normal speech from the stuttered speech. The primary objective of this paper is to propose a novel approach through optimized cepstral features selection that improves the classifiers accuracy. In this paper, Particle Swarm Optimization (PSO) and Synergistic Fibroblast Optimization (SFO) were introduced to select optimal features from conventional MFCC (Mel-Frequency Cepstrum Coefficients). The optimized cepstral features from PSO and SFO of pre-processed Tamil speech data is used to discriminate among different categories of speech signals like Normal, Moderate and Sever stutter through machine learning classification methods such as Support Vector Machine (SVM) and Naive Bayes (NB). From the experimental results, the optimal selection of cepstral features using SFO algorithm has achieved high accuracy of 96.08% employed with NB which outperforms well to the feature selection of PSO and classical MFCC. The evaluation of the proposed methodology is done by using performance metrics like sensitivity, specificity, precision, f-score and accuracy.
机译:语音是人与人之间最重要,必不可少的交流方式。在交流中,由于引起音节或单词重复,延长和插入的情感,恐慌和心理因素的中断,连续的语音流受到影响。言语不适应是言语病理学家将正常言语与口吃言语隔离开来的主要挑战。本文的主要目的是通过优化倒谱特征选择来提出一种新颖的方法,该方法可以提高分类器的准确性。本文介绍了粒子群优化(PSO)和协同成纤维细胞优化(SFO),以从常规MFCC(Mel-频率倒谱系数)中选择最佳特征。通过预处理的泰米尔语语音数据的PSO和SFO优化的倒谱特征用于通过机器学习分类方法(例如支持向量机(SVM)和朴素贝叶斯(NB))区分语音信号的不同类别,例如正常,中度和严重口吃)。从实验结果来看,使用SFO算法对倒频谱特征的最佳选择已达到96.08%的高精度,与NB相比,其性能优于PSO和经典MFCC的特征选择。通过使用性能指标(如敏感性,特异性,精密度,f分数和准确性)对提议的方法进行评估。

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