Identification of Age Voiceprint Using Machine Learning Algorithms

Authors

  • Linus A Xavier

Keywords:

Age Voiceprint, K-NN, MFCC, MLP, RF, SVM

Abstract

The voice is considered a biometric trait since we can extract information from the speech signal that allows us to identify the person speaking in a specific recording. Fingerprints, iris, DNA, or speech can be used in biometric systems, with speech being the most intuitive, basic, and easy to create characteristic. Speech-based services are widely used in the banking and mobile sectors, although these services do not employ voice recognition to identify consumers. As a result, the possibility of using these services under a fake name is always there. To reduce the possibility of fraudulent identification, voice-based recognition systems must be designed. In this research, Mel Frequency Cepstral Coefficients (MFCC) characteristics were retrieved from the gathered voice samples to train five different machine learning algorithms, namely, the decision tree, random forest (RF), support vector machines (SVM), closest neighbor (k-NN), and multi-layer sensor (MLP). Accuracy, precision, recall, specificity, and F1 score were used as classification performance metrics to compare these algorithms. According to the findings of the study, the MLP approach had a high classification accuracy of 91%. In addition, it seems that RF performs better than other measurements. This finding demonstrates how these categorization algorithms may assist voice-based biometric systems.

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Published

2019-11-06

How to Cite

Xavier, L. A. . . (2019). Identification of Age Voiceprint Using Machine Learning Algorithms. ResearchBerg Review of Science and Technology, 2(4), 1–16. Retrieved from https://researchberg.com/index.php/rrst/article/view/30

Issue

Section

Research Articles