Computer analysis of similarities between albums in popular music
2014; Elsevier BV; Volume: 45; Linguagem: Inglês
10.1016/j.patrec.2014.02.021
ISSN1872-7344
Autores Tópico(s)Neuroscience and Music Perception
ResumoAnalysis of musical styles is a complex cognitive task normally performed by music fans and critics, and due to the multi-dimensional nature of music data can be considered a challenging task for computing machines. Here we propose an automatic quantitative method that can analyze similarities between the sound of popular music albums in an unsupervised fashion. The method works by first converting the music samples into two-dimensional spectrograms, and then extracting a large set of 2883 2D numerical content descriptors from the raw spectrograms as well as 2D transforms and compound transforms of the spectrograms. The similarity between each pair of samples is computed using a variation of the Weighted K-Nearest Neighbor scheme, and a phylogeny is then used to visualize the differences between the albums. Experimental results show that the method was able to automatically organize the albums of The Beatles by their chronological order, and also unsupervisely arranged albums of musicians such as U2, Queen, ABBA, and Tears for Fears in a fashion that is largely in agreement with their chronological order and musical styles.
Referência(s)