2023
DOI: 10.21203/rs.3.rs-2244414/v2
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Effective Feature Selection in Speech Emotion RecognitionSystems using Generative Adversarial Networks

Abstract: Thus far, it has been unknown whether feature selection methods succeed in increasing the efficiency of speech-emotion recognition systems. This article discusses and evaluates feature selection for data augmentation purposes in a speech emotion recognition system. This study performed the experiments using Python and on four common databases: EMODB,eNTERFACE05, SAVEE, and IEMOCAP. Data analysis was conducted on all four databases for five emotions: sadness, fear, anger, happiness, andneutral. A support vector… Show more

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