Performance comparison of representative methods for few-shot speech gender analysis
Songling Li,
Haoyu Pan,
Haoming Zhang
et al.
Abstract:As one of the basic tasks of the famous and important speech emotion recognition system, gender recognition based on speech analysis has attracted a lot of research interests in recent year. This paper considers the model performance of different machine learning methods on gender recognition in few-shot learning. In this article, we use three types of methods, namely Support Vector Machine (SVM), Convolutional Neural Networks (CNN), and Random forest. Among them, in the experiments of the SVM method, we repor… Show more
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