Abstract

In recent years, there is a growing interest in speech emotion recognition (SER) by analyzing input speech. SER can be considered as simply pattern recognition task which includes features extraction, classifier, and speech emotion database. The objective of this paper is to provide a comprehensive review on various literature available on SER. Several audio features are available, including linear predictive coding coefficients (LPCC), Mel-frequency cepstral coefficients (MFCC), and Teager energy based features. While for classifier, many algorithms are available including hidden Markov model (HMM), Gaussian mixture model (GMM), vector quantization (VQ), artificial neural networks (ANN), and deep neural networks (DNN). In this paper, we also reviewed various speech emotion database. Finally, recent related works on SER using DNN will be discussed.

Highlights

  • Speech emotion recognition (SER) is one of the topics in speech processing that has been continuously researched

  • The objective of this paper is to provide a comprehensive review on various literature available on speech emotion recognition (SER)

  • The three most popular classifiers hidden Markov model (HMM), Gaussian mixture model (GMM) and vector quantization (VQ) are discussed in brief and compared with the classifier that is used in this project, Deep Neural Network deep neural networks (DNN), which is an extended version of artificial neural networks (ANN)

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Summary

A Review on Emotion Recognition Algorithms Using Speech Analysis

Teddy Surya Gunawan*1, Muhammad Fahreza Alghifari, Malik Arman Morshidi, Mira Kartiwi4 1,2,3Department of Electrical and Computer Engineering, International Islamic University Malaysia 4Department of Information Systems, International Islamic University Malaysia. Article history: Received Nov 15, 2017 Revised Dec 7, 2017 Accepted Dec 24, 2017

INTRODUCTION
REVIEW ON AUDIO FEATURES EXTRACTION
REVIEW ON CLASSIFIERS
REVIEW ON SPEECH EMOTION DATABASE
Methodology
Findings
CONCLUSION

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