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Raga Analysis Using Artificial Neural Network

BuchKartoniert, Paperback
72 Seiten
Englisch
LAP Lambert Academic Publishingerschienen am15.10.2014
Because music conveys and evokes feelings, a wealth of research has been performed on music emotion recognition. Research has shown that musical mood is linked to features based on rhythm, timbre, melody and lyrics. For example, sad music correlates with slow tempo while happy music is generally faster. We see only limited success has been obtained in learning automatic classifiers of Hindustani classical music emotions. In this book we have collected a ground truth data set of 196 raga clips that have been tagged with one of two emotions "happy" and "sad". We investigated all recordings of a time period of 30 seconds for uniformity. Various set of audio features were extracted using standard algorithms. A musical mood classifier was trained. We found that the probability of pitch contour, when included as one of the features, gives 30% higher accuracy of mood recognition.mehr

Produkt

KlappentextBecause music conveys and evokes feelings, a wealth of research has been performed on music emotion recognition. Research has shown that musical mood is linked to features based on rhythm, timbre, melody and lyrics. For example, sad music correlates with slow tempo while happy music is generally faster. We see only limited success has been obtained in learning automatic classifiers of Hindustani classical music emotions. In this book we have collected a ground truth data set of 196 raga clips that have been tagged with one of two emotions "happy" and "sad". We investigated all recordings of a time period of 30 seconds for uniformity. Various set of audio features were extracted using standard algorithms. A musical mood classifier was trained. We found that the probability of pitch contour, when included as one of the features, gives 30% higher accuracy of mood recognition.
Details
ISBN/GTIN978-3-659-62039-3
ProduktartBuch
EinbandartKartoniert, Paperback
Erscheinungsjahr2014
Erscheinungsdatum15.10.2014
Seiten72 Seiten
SpracheEnglisch
Gewicht126 g
Artikel-Nr.33319683
Rubriken
GenreNoten

Autor

Dr. Soubhik Chakraborty is an Associate Professor in the Deptt. of Applied Mathematics at BIT Mesra, Ranchi, India. He has published several papers in algorithm analysis and music analysis. He is an AMS, ACM and IEEE reviewer. Mr. Pranay Prasoon did his M.Tech. in Scientific Computing from the same department under the guidance of Dr. Chakraborty.