Comunicació presentada a la 17th International Society for Music Information Retrieval Conference (ISMIR 2016), celebrada els dies 7 a 11 d'agost de 2016 a Nova York, EUA.Computational expressive music performance studies the analysis and characterisation of the deviations that a musician introduces when performing a musical piece. It has been studied in a classical context where timing and dynamic deviations are modeled using machine learning techniques. In jazz music, work has been done previously on the study of ornament prediction in guitar performance, as well as in saxophone expressive modeling. However, little work has been done on expressive ensemble performance. In this work, we analysed the musical expressivity of jazz guitar and ...
Previous research in expressive music performance has described how solo musicians intuitively shape...
Computational modelling of expressive music performance has been widely studied in the past. While p...
Comunicació presentada a: 10th International Workshop on Machine Learning and Music (MML), celebrat ...
Comunicació presentada a la 17th International Society for Music Information Retrieval Conference (I...
Expert musicians introduce expression in their performances by manipulating sound properties such as...
Expert musicians introduce expression in their performances by manipulating sound properties such as...
Expert musicians introduce expression in their performances by manipulating sound properties such as...
Computational approaches for modelling expressive music performance have produced systems that emula...
Computational approaches for modelling expressive music performance have produced systems that emula...
Professional musicians manipulate sound properties such as timing, energy, pitch and timbre in order...
In this paper we describe a machine learning approach to one of the most challenging aspects of comp...
We present a machine learning approach to automatically generate expressive (ornamented) jazz perfor...
In musical performances, expressive models have been proposed in order to study the analysis and cha...
We present a machine learning approach to automatically generate expressive (ornamented) jazz perfor...
<p>We present a machine learning approach to automatically generate expressive (ornamented) jazz per...
Previous research in expressive music performance has described how solo musicians intuitively shape...
Computational modelling of expressive music performance has been widely studied in the past. While p...
Comunicació presentada a: 10th International Workshop on Machine Learning and Music (MML), celebrat ...
Comunicació presentada a la 17th International Society for Music Information Retrieval Conference (I...
Expert musicians introduce expression in their performances by manipulating sound properties such as...
Expert musicians introduce expression in their performances by manipulating sound properties such as...
Expert musicians introduce expression in their performances by manipulating sound properties such as...
Computational approaches for modelling expressive music performance have produced systems that emula...
Computational approaches for modelling expressive music performance have produced systems that emula...
Professional musicians manipulate sound properties such as timing, energy, pitch and timbre in order...
In this paper we describe a machine learning approach to one of the most challenging aspects of comp...
We present a machine learning approach to automatically generate expressive (ornamented) jazz perfor...
In musical performances, expressive models have been proposed in order to study the analysis and cha...
We present a machine learning approach to automatically generate expressive (ornamented) jazz perfor...
<p>We present a machine learning approach to automatically generate expressive (ornamented) jazz per...
Previous research in expressive music performance has described how solo musicians intuitively shape...
Computational modelling of expressive music performance has been widely studied in the past. While p...
Comunicació presentada a: 10th International Workshop on Machine Learning and Music (MML), celebrat ...