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Automatic Best-Take Detection
Details
This study is an initial attempt of automatically estimating the musical performance quality of single instrument studio recordings. The primary purpose is to develop an algorithm for best-take detection in the context of Digital Audio Workstations. The problem is narrowed down to monophonic lines of electric guitar and singing voice in popular music. The analysed musical rubrics are rhythm and pitch. In contrast to previous work, the exact melody is not known for the assessment, while a synchronized click track and a backing track can be used as references. Timing and intonation features are derived from tempogram and chromagram representations, as well as from an automatically performed melody transcription. The majority of implemented features uses either quantization cost functions or histogram-based relations. Different machine learning techniques for classification and ranking are applied for the final musical quality prediction.
Autorentext
Carsten Bönsel originates from Darmstadt. He studied Media Technology at Ilmenau University of Technology. His master's degree was gained in collaboration with Fraunhofer IDMT.
Weitere Informationen
- Allgemeine Informationen
- GTIN 09783639807486
- Sprache Englisch
- Größe H220mm x B150mm x T8mm
- Jahr 2015
- EAN 9783639807486
- Format Kartonierter Einband
- ISBN 3639807480
- Veröffentlichung 14.04.2015
- Titel Automatic Best-Take Detection
- Autor Carsten Bönsel
- Gewicht 197g
- Herausgeber AV Akademikerverlag
- Anzahl Seiten 120
- Genre Informatik