Improving Indonesian multietnics speaker recognition using pitch shifting data augmentation

Q2 Decision Sciences
Kristiawan Nugroho, Isworo Nugroho, De Rosal Ignatius Moses Setiadi, Omar Farooq
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引用次数: 0

Abstract

Speaker recognition to recognize multiethnic speakers is an interesting research topic. Various studies involving many ethnicities require the right approach to achieve optimal model performance. The deep learning approach has been used in speaker recognition research involving many classes to achieve high accuracy results with promising results. However, multi-class and imbalanced datasets are still obstacles encountered in various studies using the deep learning method which cause overfitting and decreased accuracy. Data augmentation is an approach model used in overcoming the problem of small amounts of data and multiclass problems. This approach can improve the quality of research data according to the method applied. This study proposes a data augmentation method using pitch shifting with a deep neural network called pitch shifting data augmentation deep neural network (PSDA-DNN) to identify multiethnic Indonesian speakers. The results of the research that has been done prove that the PSDA-DNN approach is the best method in multi-ethnic speaker recognition where the accuracy reaches 99.27% and the precision, recall, F1 score is 97.60%.
利用频移数据增强改进印尼语多民族说话人识别
多民族说话人识别是一个有趣的研究课题。涉及许多种族的各种研究需要正确的方法来实现最佳的模型性能。深度学习方法已应用于多类说话人识别研究中,取得了较高的准确率,并取得了良好的效果。然而,在使用深度学习方法的各种研究中,多类和不平衡的数据集仍然是遇到的障碍,导致过拟合和准确性下降。数据增强是一种用于克服小数据量和多类问题的方法模型。根据所采用的方法,可以提高研究数据的质量。本研究提出了一种基于深度神经网络的基音移位数据增强方法,即基音移位数据增强深度神经网络(PSDA-DNN)来识别多民族印尼语使用者。已经完成的研究结果证明,PSDA-DNN方法是多民族说话人识别的最佳方法,准确率达到99.27%,查全率、查全率、F1分数为97.60%。
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来源期刊
IAES International Journal of Artificial Intelligence
IAES International Journal of Artificial Intelligence Decision Sciences-Information Systems and Management
CiteScore
3.90
自引率
0.00%
发文量
170
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