Inducing Rules of Ensemble Music Performance : A Machine Learning Approach
Marchini, M., Ramirez, R., Papiotis, P. & Maestre, E. (2013). Inducing Rules of Ensemble Music Performance : A Machine Learning Approach. In: Proceedings of the 3rd International Conference on Music & Emotion (ICME3), Jyväskylä, Finland, 11th - 15th June 2013. Geoff Luck & Olivier Brabant (Eds.). University of Jyväskylä, Department of Music.
Päivämäärä
2013Previous research in expressive music performance has described how solo musicians intuitively shape each note in relation to local/global score contexts. However, expression in ensemble performances, where each individual voice is played simultaneously with other voices, has been little explored. We present an exploratory study in which the performance of a string quartet is recorded and analysed by a computer. We use contact microphones to acquire four audio signals from which a set of audio descriptors is extracted individually for each musician. Moreover, we use motion capture to extract bowing descriptors (bow velocity/force) from each of the four performers. The gathered multimodal data is used to align the performance to the score. Then, from the aligned data streams, we obtain a note-by-note description of the performance by extracting note performance parameters. We apply machine-learning algorithms to induce human-readable rules emerging from the data. The dataset consists of three performances of Beethoven’s quartet n° 4 in C minor by a group of professional musicians: a “normal”, a “mechanical” and an “over-emphasized” execution. We run our analysis on the three conditions separately as well as jointly, deriving rules specific to each condition and rules of general domain. Apart from encoding knowledge of expressive performance, the results shed light on how musicians' roles in ensemble performance.
...
Julkaisija
University of Jyväskylä, Department of MusicKonferenssi
The 3rd International Conference on Music & Emotion, Jyväskylä, Finland, June 11-15, 2013Kuuluu julkaisuun
Proceedings of the 3rd International Conference on Music & Emotion (ICME3), Jyväskylä, Finland, 11th - 15th June 2013. Geoff Luck & Olivier Brabant (Eds.). ISBN 978-951-39-5250-1Asiasanat
Metadata
Näytä kaikki kuvailutiedotKokoelmat
- ICME 2013 [49]
Lisenssi
Samankaltainen aineisto
Näytetään aineistoja, joilla on samankaltainen nimeke tai asiasanat.
-
Predicting Children's Myopia Risk : A Monte Carlo Approach to Compare the Performance of Machine Learning Models
Artiemjew, Piotr; Cybulski, Radosław; Emamian, Mohammad; Grzybowski, Andrzej; Jankowski, Andrzej; Lanca, Carla; Mehravaran, Shiva; Młyński, Marcin; Morawski, Cezary; Nordhausen, Klaus; Pärssinen, Olavi; Ropiak, Krzysztof (SCITEPRESS Science and Technology Publications, 2024)This study presents the initial results of the Myopia Risk Calculator (MRC) Consortium, introducing an innovative approach to predict myopia risk by using trustworthy machine-learning models. The dataset included approximately ... -
Evaluation of Ensemble Machine Learning Methods in Mobile Threat Detection
Kumar, Sanjay; Viinikainen, Ari; Hämäläinen, Timo (Infonomics Society, 2017)The rapid growing trend of mobile devices continues to soar causing massive increase in cyber security threats. Most pervasive threats include ransom-ware, banking malware, premium SMS fraud. The solitary hackers use ... -
Grand canonical ensemble approach to electrochemical thermodynamics, kinetics, and model Hamiltonians
Melander, Marko M. (Elsevier, 2021)The unique feature of electrochemistry is the ability to control reaction thermodynamics and kinetics by the application of electrode potential. Recently, theoretical methods and computational approaches within the grand ... -
Introducing libeemd: a program package for performing the ensemble empirical mode decomposition
Luukko, Perttu; Helske, Jouni; Räsänen, Esa (Springer, 2016)t The ensemble empirical mode decomposition (EEMD) and its complete variant (CEEMDAN) are adaptive, noise-assisted data analysis methods that improve on the ordinary empirical mode decomposition (EMD). All these methods ... -
Improving Performance in Colorectal Cancer Histology Decomposition using Deep and Ensemble Machine Learning
Prezja, Fabi; Annala, Leevi; Kiiskinen, Sampsa; Lahtinen, Suvi; Ojala, Timo; Ruusuvuori, Pekka; Kuopio, Teijo (Elsevier, 2024)In routine colorectal cancer management, histologic samples stained with hematoxylin and eosin are commonly used. Nonetheless, their potential for defining objective biomarkers for patient stratification and treatment ...
Ellei toisin mainittu, julkisesti saatavilla olevia JYX-metatietoja (poislukien tiivistelmät) saa vapaasti uudelleenkäyttää CC0-lisenssillä.