Singer identification model using data augmentation and enhanced feature conversion with hybrid feature vector and machine learning
Serhat Hizlisoy,
Recep Sinan Arslan,
Emel Çolakoğlu
Abstract:Analyzing songs is a problem that is being investigated to aid various operations on music access platforms. At the beginning of these problems is the identification of the person who sings the song. In this study, a singer identification application, which consists of Turkish singers and works for the Turkish language, is proposed in order to find a solution to this problem. Mel-spectrogram and octave-based spectral contrast values are extracted from the songs, and these values are combined into a hybrid feat… Show more
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