Abstract

Speech emotion recognition plays an important role in human–computer interaction, which uses speech signals to determine the emotional state. Previous studies have proposed various features and feature selection methods. However, few studies have investigated the two-stage feature selection method for speech emotion classification. In this study, we propose a novel speech emotion classification algorithm based on two-stage feature selection and two fusion strategies. Specifically, three types of features are extracted from speech signals: constant-Q spectrogram-based histogram of oriented gradients, openSMILE, and wavelet packet decomposition-based features. Then, two-stage feature selection using random forest and grey wolf optimization is applied to reduce feature dimension and model training time and improve the classification performance. In addition, both early and late fusion strategies are explored aiming to further improve the performance. Experimental results indicate that early fusion with two-stage feature selection can achieve the best performance. The highest classification accuracy for RAVDESS, SAVEE, EMOVO, and EmoDB is 86.97%, 88.79%, 89.24%, and 95.29%, respectively.

Full Text
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