Title of article
Emotion Recognition for Persian Speech Using Convolutional Neural Network and Support Vector Machine
Author/Authors
Hashemi ، Saeed Department of Computer Engineering and Information Technology - Payame Noor University (PNU) , Ayat ، Saeed Department of Computer Engineering and Information Technology - Payame Noor University (PNU)
From page
85
To page
105
Abstract
The paper discusses the limitations of emotion recognition in Persian speech due to inefficient feature extraction and classification tools. To address this, we propose a new method for detecting hidden emotions in Persian speech with higher recognition accuracy. The method involves four steps: preprocessing, feature description, feature extraction, and classification. The input signal is normalized in the preprocessing step using single-channel vector conversion and signal resampling. Feature descriptions are performed using Mel-Frequency Cepstral Coefficients and Spectro-Temporal Modulation techniques, which produce separate feature matrices. These matrices are then merged and used for feature extraction through a Convolutional Neural Network. Finally, a Support Vector Machine with a linear kernel function is used for emotion classification. The proposed method is evaluated using the Sharif Emotional Speech dataset and achieves an average accuracy of 80.9% in classifying emotions in Persian speech.
Keywords
Emotion recognition in speech , Mel-Frequency cepstral coefficients , Convolutional neural network , Support vector machine
Journal title
Control and Optimization in Applied Mathematics
Journal title
Control and Optimization in Applied Mathematics
Record number
2769792
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