Ensemble Learning of Hybrid Acoustic Features for Speech Emotion Recognition

Author:

Zvarevashe KudakwasheORCID,Olugbara Oludayo

Abstract

Automatic recognition of emotion is important for facilitating seamless interactivity between a human being and intelligent robot towards the full realization of a smart society. The methods of signal processing and machine learning are widely applied to recognize human emotions based on features extracted from facial images, video files or speech signals. However, these features were not able to recognize the fear emotion with the same level of precision as other emotions. The authors propose the agglutination of prosodic and spectral features from a group of carefully selected features to realize hybrid acoustic features for improving the task of emotion recognition. Experiments were performed to test the effectiveness of the proposed features extracted from speech files of two public databases and used to train five popular ensemble learning algorithms. Results show that random decision forest ensemble learning of the proposed hybrid acoustic features is highly effective for speech emotion recognition.

Publisher

MDPI AG

Subject

Computational Mathematics,Computational Theory and Mathematics,Numerical Analysis,Theoretical Computer Science

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1. Emotion Recognition on Speech Attributes Using Machine Learning;2024 IEEE International Conference on Information Technology, Electronics and Intelligent Communication Systems (ICITEICS);2024-06-28

2. A novel decomposition-based architecture for multilingual speech emotion recognition;Neural Computing and Applications;2024-03-02

3. Hybrid Approaches to Emotion Recognition: A Comprehensive Survey of Audio-Textual Methods and Their Application;2024 4th International Conference on Advanced Research in Computing (ICARC);2024-02-21

4. A review on speech emotion recognition for late deafened educators in online education;International Journal of Speech Technology;2024-01-24

5. Combined CNN LSTM with attention for speech emotion recognition based on feature-level fusion;Multimedia Tools and Applications;2024-01-02

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