The paper explores speech emotion recognition systems, evaluating classification methods including support vector machine (SVM) and C5.0, along with their combination (SVM-C5.0). It demonstrates that the SVM-C5.0 method exhibits improved recognition accuracy (5.5% to 8.9%) over SVM and C5.0, using various features like energy, zero crossing rate, pitch, and mel-frequency cepstral coefficients. The study also addresses challenges such as emotional databases and feature extraction, providing insights into the effectiveness of different classification models.
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