基于MFCC的说话人识别特征提取的窗函数比较

Muhammad Raafi'u Firmansyah, Risanuri Hidayat, Agus Bejo
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引用次数: 4

摘要

说话人识别系统主要由两个模块组成;第一部分用于从输入中提取特征,第二部分用于根据第一部分的特征对结果进行分类。特征提取方法的选择是获得最优特征集的关键。Mel-frequency倒谱系数(MFCC)是一种特征提取方法,用于将说话人的声音转换成系数作为分类过程的输入。MFCC有几个过程,其中一个是开窗。加窗的目的是减少分帧后对信号的不连续影响。因此,使用最佳的窗口技术是很重要的,这样每个声音的特征才不会被浪费。本文重点介绍了几个窗口函数的使用,如hanning、hamming、bartlett、blackman、kaiser和gaussian。本研究提出的分类过程是人工神经网络(ANN)。所使用的数据是直接记录的16位发言者的800个数据。用于识别的记录数据是每个扬声器从数字0到9(0-9)的声音。使用K-fold交叉验证对所创建的分类模型进行评估,以确定具有最佳精度的组合。结果表明,采用加窗汉明和高斯分布的13个MFCC特征,标准差为72,效果最好。两者的准确率均为95%。本文旨在帮助读者对说话人识别领域有所了解。
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Comparison of Windowing Function on Feature Extraction Using MFCC for Speaker Identification
The speaker identification system is built by two main blocks; the first part is used to extract features from the input, while the second part is to classify the results from the features in the first part. Selection of the method to perform feature extraction is very important to obtain the optimal feature set. Mel-frequency cepstral coefficients (MFCC) is a feature extraction method that is used to convert the speaker's voice into coefficients as input for the classification process. There are several processes in MFCC, one of which is windowing. Windowing aims to reduce the discontinuous effect on the signal after the framing process. It is therefore important to use optimal windowing techniques so that the features of each sound are not wasted. This article highlights the use of several window functions such as hanning, hamming, bartlett, blackman, kaiser, and gaussian. The classification process proposed in this study is Artificial neural network (ANN). The data used amounted to 800 data from 16 speakers who were recorded directly. The data recorded for identification was the sound from the digits zero to nine (0-9) by each speaker. K-fold cross-validation was used as an evaluation of the classification model created to determine the combination with the best accuracy. The results shows that the use of 13 MFCC features with windowing hamming and gaussian with standard deviation values 72 obtains the best results. Both obtained an accuracy of 95%. This paper helps readers to gain insight in the field of speaker identification.
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