Song Emotion Recognition: a Performance Comparison Between Audio Features and Artificial Neural Networks

September 24, 2022 ยท Declared Dead ยท ๐Ÿ› Revista Eletrรดnica de Iniciaรงรฃo Cientรญfica em Computaรงรฃo

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Authors Karen Rosero, Arthur Nicholas dos Santos, Pedro Benevenuto Valadares, Bruno Sanches Masiero arXiv ID 2209.12045 Category cs.SD: Sound Cross-listed cs.AI, eess.AS Citations 1 Venue Revista Eletrรดnica de Iniciaรงรฃo Cientรญfica em Computaรงรฃo Last Checked 4 months ago
Abstract
When songs are composed or performed, there is often an intent by the singer/songwriter of expressing feelings or emotions through it. For humans, matching the emotiveness in a musical composition or performance with the subjective perception of an audience can be quite challenging. Fortunately, the machine learning approach for this problem is simpler. Usually, it takes a data-set, from which audio features are extracted to present this information to a data-driven model, that will, in turn, train to predict what is the probability that a given song matches a target emotion. In this paper, we studied the most common features and models used in recent publications to tackle this problem, revealing which ones are best suited for recognizing emotion in a cappella songs.
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