4.6 Article

A BiLSTM-Transformer and 2D CNN Architecture for Emotion Recognition from Speech

Journal

ELECTRONICS
Volume 12, Issue 19, Pages -

Publisher

MDPI
DOI: 10.3390/electronics12194034

Keywords

emotion recognition from speech; transformer; attention mechanism; bidirectional LSTM; convolutional neural network; audio feature extraction

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The significance of emotion recognition technology continues to grow, and this study proposes a new model architecture that combines BiLSTM-Transformer and 2D CNN to enhance the efficacy of emotion recognition from speech. The results show high accuracy rates in two major emotion recognition databases.
The significance of emotion recognition technology is continuing to grow, and research in this field enables artificial intelligence to accurately understand and react to human emotions. This study aims to enhance the efficacy of emotion recognition from speech by using dimensionality reduction algorithms for visualization, effectively outlining emotion-specific audio features. As a model for emotion recognition, we propose a new model architecture that combines the bidirectional long short-term memory (BiLSTM)-Transformer and a 2D convolutional neural network (CNN). The BiLSTM-Transformer processes audio features to capture the sequence of speech patterns, while the 2D CNN handles Mel-Spectrograms to capture the spatial details of audio. To validate the proficiency of the model, the 10-fold cross-validation method is used. The methodology proposed in this study was applied to Emo-DB and RAVDESS, two major emotion recognition from speech databases, and achieved high unweighted accuracy rates of 95.65% and 80.19%, respectively. These results indicate that the use of the proposed transformer-based deep learning model with appropriate feature selection can enhance performance in emotion recognition from speech.

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