Autoregressive Time Series Analysis (TSA) of music can model aspects of its acoustic features, structural sequencing and of consequent listeners' perceptions. This article concerns generation of keyboard music by repeatedly simulating from both uni-and multi-variate TSA models of live performed event pitch, key velocity (which influences loudness), duration and inter-onset interval (specifying rhythmic structure). The MAX coding platform receives performed, random or preformed note sequences, and transfers them via a computer socket to the statistical platform R, in which time series models of long segments of the data streams are obtained. Unlike many predecessors, the system exploits both univariate (e.g., pitch alone) and multivariate (p...
We propose a novel approach to automated rhythm generation in which a Transformer XL model is employ...
The musical transcription problem seeks a low-order parametric representation of an audio signal whe...
Multivariate analyses of dynamic correlations between continuous acoustic properties (intensity and ...
Multivariate analyses of dynamic correlations between continuous acoustic properties (intensity and ...
International audienceThis paper introduces the first system performing automatic orchestration from...
This paper investigates the exploration of musical time in Live Electronic Music and discusses the a...
This thesis will describe a set of interactive systems developed for a range of musical styles and i...
Thesis (Ph.D.)--University of Washington, 2021Generative models can serve as a powerful primitive fo...
‘‘Moving to the beat’ ’ is both one of the most basic and one of the most profound means by which hu...
This article describes the M ́egra music system, a code-based, stochastic music system that can be u...
We describe a novel approach for generating music using a self-correcting, non-chronological, autore...
People can achieve rich musical expression through vocal sound { see for example human beatboxing, w...
This thesis presents several hierarchical generative Bayesian models of musical signals designed to ...
Automatic rhythm analysis is an important area of research in Music Information Retrieval (MIR) as i...
The procreative statistical framework of musical note structures produces a crucial role in multimed...
We propose a novel approach to automated rhythm generation in which a Transformer XL model is employ...
The musical transcription problem seeks a low-order parametric representation of an audio signal whe...
Multivariate analyses of dynamic correlations between continuous acoustic properties (intensity and ...
Multivariate analyses of dynamic correlations between continuous acoustic properties (intensity and ...
International audienceThis paper introduces the first system performing automatic orchestration from...
This paper investigates the exploration of musical time in Live Electronic Music and discusses the a...
This thesis will describe a set of interactive systems developed for a range of musical styles and i...
Thesis (Ph.D.)--University of Washington, 2021Generative models can serve as a powerful primitive fo...
‘‘Moving to the beat’ ’ is both one of the most basic and one of the most profound means by which hu...
This article describes the M ́egra music system, a code-based, stochastic music system that can be u...
We describe a novel approach for generating music using a self-correcting, non-chronological, autore...
People can achieve rich musical expression through vocal sound { see for example human beatboxing, w...
This thesis presents several hierarchical generative Bayesian models of musical signals designed to ...
Automatic rhythm analysis is an important area of research in Music Information Retrieval (MIR) as i...
The procreative statistical framework of musical note structures produces a crucial role in multimed...
We propose a novel approach to automated rhythm generation in which a Transformer XL model is employ...
The musical transcription problem seeks a low-order parametric representation of an audio signal whe...
Multivariate analyses of dynamic correlations between continuous acoustic properties (intensity and ...