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Martin Herzog
Contact
- Room: H 3001 A
- Consultation hours: appointment via mail
- Phone: +49 (0)30 314-29093
- Mail: herzog [at] tu-berlin.de
Vita
1984 | born in Berlin, Germany, August 20th |
2004-2011 | Study of Computer Science at Humboldt University Berlin (Diploma 2011) |
2006-2008 | Freelance web developer |
2010-2011 | Student worker at ]init[ AG for Digital Communication |
2011 | Diploma thesis: „Harmony Analysis of MIDI Data as a Basis for the Extraction of Harmonic High-Level-Features“ |
since 2011 | Consultant at ]init[ AG for Digital Communication |
since 2016 | Research associate at TU Berlin Current project: ABC_DJ (Artist-to-Business-to-Business-to-Consumer Audio Branding System) PhD project: Predicting Musical Meaning from High-Level Music Features |
PhD Project
Predicting Musical Meaning from High-Level Music Features
What is the link between musical content on one hand and perceived musical meaning on the other?
In my PhD project I investigate the question which features – derived from music theory – play an important role in predicting perceived musical meaning. Using data from a large-scale lsitening experiment, I aim to develop a Multilevel Linear Regression Model for the prediction of perceived semantics in popular music.
Supervisors: Prof. Dr. Stefan Weinzierl (TU Berlin), Dr. Hauke Egermann (University of York, UK)
Research Interests
- Music perception and processing
- Music and emotion
- Music information retrieval
- Audio branding
Publications
Herzog, M., Lepa, S., Steffens, J., Schönrock, A. & Egermann, H. (2017): Predicting musical meaning in audio branding scenarios. Proceedings of the 25th Anniversary Conference of the European Society for Cognitive Science of Music, Ghent, Belgium, 2017
Steffens, J., Lepa, S., Egermann, H., Schönrock, A. & Herzog, M. (2017): Entwicklung eines Systems zur automatischen Musikempfehlung im Kontext des Audio Brandings. In: Fortschritte der Akustik: Tagungsband d. 43. DAGA. Deutsche Gesellschaft für Akustik, 2017
Herzog, M., Lepa, S. & Egermann, H. (2016): Towards automatic music recommendation for audio branding scenarios. Proceedings of the ISMIR 2016 conference, New York, USA, 2016