Autores
Gómez Sánchez Laura Elena
Sossa Azuela Juan Humberto
Barrón Fernández Ricardo
Jiménez Vielma Julio Fernando
Título A new methodology for music retrieval based on dynamic neural networks
Tipo Revista
Sub-tipo Tipo C
Descripción International Journal of Hybrid Intelligent Systems
Resumen Most of in music information retrieval (MIR) has been focused on the symbolic representations of music. However, most of the digitally available music is in the form of raw audio signals. Although various attempts for monophonic and polyphonic transcription have been developed, none has been successful and general enough in the case of real world signals. So far, most of the research has been based on developing efficient music retrieval systems. In this paper, we introduce a music retrieval system based on Dynamic Neural Networks (DNN), which are trained with the signal melody, and not with traditional descriptors. The proposal was tested with a database composed of 1000 melodies. The results are very encouraging
Observaciones DOI 10.3233/HIS-2011-0143
Lugar
País
No. de páginas 1-11
Vol. / Cap. Vol. 9, No. 1
Inicio 2012-04-24
Fin
ISBN/ISSN