Utilizing Machine Learning for Speech Emotion Recognition

Authors

  • M. Prithi Research Scholar, Department of Computer Science, Periyar University, Salem, Tamilnadu
  • Sankari M. Assistant Professor, Department of CSE, Sathyabama Institute of Science and Technology
  • Jayashri Prashant Shinde Assistant Professor Information Technology Department, G H Raisoni College of Engineering and Management, Pune
  • Rakesh Kumar Department of Computer Engineering & Applications, GLA University, Mathura
  • A. Deepak Saveetha School of Engineering, Saveetha Institute of Medical and Technical Sciences, Saveetha University, Chennai, Tamilnadu
  • Hemant Singh Pokhariya Assistant Professor, Department of Computer Science & Engineering, Graphic Era Deemed to be University, Dehradun, Uttarakhand
  • Anurag Shrivastava Saveetha School of Engineering, Saveetha Institute of Medical and Technical Sciences, Chennai, Tamilnadu

Keywords:

Speech Emotion Recognition, Machine Learning, MLP Classifier, Accuracy

Abstract

Voice emotion recognition, a captivating field, employs machine learning techniques to identify and interpret emotions conveyed through speech. The primary objective of this research is to achieve accurate emotion recognition and classification by leveraging advanced algorithms and data analysis techniques. Throughout the process, significant features like pitch, intensity, and spectral characteristics are extracted from a vast collection of labeled voice recordings. Machine learning models including Support Vector Machines, Multilayer Perceptron (MLP) classifiers, Convolutional Neural Networks, and LSTM are then trained on this data to uncover patterns and correlations between these features and emotions. Once trained, these models can be employed to identify emotions in real-time speech inputs. The applications of speech emotion recognition span across multiple domains, encompassing virtual assistants, mental health monitoring, human-computer interaction, and entertainment. However, several challenges such as variability, subjectivity, cultural differences, and contextual influences must be addressed to enhance the accuracy and robustness of speech emotion recognition systems. Ongoing research endeavors seek to overcome these challenges and improve the performance of such systems. The integration of machine learning techniques into speech emotion recognition opens up exciting possibilities for comprehending and analyzing emotions in speech, contributing to a deeper understanding of human communication and interaction. Moreover, this technology holds practical implications in various fields.

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Published

10.11.2023

How to Cite

Prithi, M. ., M., S. ., Shinde, J. P. ., Kumar, R. ., Deepak, A. ., Pokhariya, H. S. ., & Shrivastava, A. . (2023). Utilizing Machine Learning for Speech Emotion Recognition . International Journal of Intelligent Systems and Applications in Engineering, 12(4s), 809–818. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/3868

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Research Article

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