基于双向长短期记忆的语音性别分类

Rangga Dwi Alamsyah, S. Suyanto
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引用次数: 5

摘要

基于语音的性别分类是语音识别的关键,可以应用于各种应用。它通常使用传统的机器学习和深度学习方法开发。本研究利用双向长短期记忆(Bidirectional Long - short - Memory, BLSTM)建立了基于语音的性别分类模型。利用Mel频率倒谱系数(MFCC)提取特征来训练BLSTM。使用1000个话语的低数据集(500个男性和500个女性)进行5次运行的评估表明,该模型能够准确地分类说话者的性别。在训练测试分割比例为80:20的情况下,模型平均准确率为86.7%,其中最高准确率为90.5%,最低准确率为81.0%。减少部分会降低其性能。在50:50的火车测试中,它仍然是稳定的。
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Speech Gender Classification Using Bidirectional Long Short Term Memory
Gender classification based on voice is crucial for speech recognition, which can be applied to various applications. It is generally developed using conventional machine learning and deep learning approaches. In this research, a gender classification model based on speech is developed using Bidirectional Long Short-Term Memory (BLSTM). The Mel Frequency Cepstral Coefficient (MFCC) is exploited to extract the features to train the BLSTM. Evaluation using a low dataset of 1,000 utterances, 500 males and 500 females, for five runs shows that the model is accurately capable of classifying the gender of the speakers. With a train-test split portion of 80:20, the model obtains an average accuracy of 86.7%, where the highest and the lowest accuracy are 90.5% and 81.0%, respectively. Reducing the portion decreases its performance. It is still stable for the 50:50 train-test split.
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