Spoken Word and Speaker Recognition Using MFCC and Multiple Recurrent Neural Networks

Yoga F. Utomo, E. C. Djamal, Fikri Nugraha, F. Renaldi
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引用次数: 1

Abstract

Identification of spoken word and speaker has been featured in many kinds of research. The problem or obstacle that persists is in the pronunciation of a particular word. So it is the noise that causes the difficulty of words to be identified. Furthermore, every human has different pronunciation habits and is influenced by several variables, such as amplitude, frequency, tempo, and rhythmic. This study proposed the identification of spoken sounds by using specific word input to determine the patterns of the speaker and spoken using Mel-frequency Cepstrum Coefficients (MFCC) and Multiple Recurrent Neural Networks (RNN). The Mel coefficient of MFCC is used as an input feature for identifying spoken words and speakers using RNN and Long Short Term Memory (LSTM). Multiple RNN works spoken word and speaker in parallel. The results obtained by multiple RNN have an accuracy of 87.74%, while single RNNs have 80.58% using Adam of new data. In order to test our model computational regularly, the experiment tested K-fold Cross-Validation of datasets for spoken and speakers with an average accuracy of 86.07%, which means the model to be able to learn on the dataset without being affected by the order or selection of test data.
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基于MFCC和多重递归神经网络的口语单词和说话人识别
口语词和说话人的识别已成为许多研究的特色。持续存在的问题或障碍是一个特定单词的发音。所以是噪音造成了辨认单词的困难。此外,每个人都有不同的发音习惯,并受到几个变量的影响,如振幅、频率、节奏和节奏。本研究提出了使用Mel-frequency倒频谱系数(MFCC)和多重递归神经网络(RNN),通过特定的单词输入来确定说话人和说话人的模式,从而识别语音。MFCC的Mel系数作为输入特征,利用RNN和LSTM识别口语单词和说话人。多个RNN并行地工作口语单词和说话者。使用Adam的新数据,多个RNN得到的结果准确率为87.74%,单个RNN得到的准确率为80.58%。为了定期测试我们的模型的计算能力,实验测试了语音和说话者数据集的K-fold交叉验证,平均准确率为86.07%,这意味着模型能够在数据集上学习,而不受测试数据的顺序或选择的影响。
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