https://aimc2023.pubpub.org/pub/latent-spaces-tonal-music Variational Autoencoders (VAEs) have proven to be effective models for producing latent representations of cognitive and semantic value. We assess the degree to which VAEs trained on a prototypical tonal music corpus of 371 Bach's chorales define latent spaces representative of the circle of fifths and the hierarchical relation of each key component pitch as drawn in music cognition. In detail, we compare the latent space of different VAE corpus encodings — Piano roll, MIDI, ABC, Tonnetz, DFT of pitch, and pitch class distributions — in providing a pitch space for key relations that align with cognitive distances. We evaluate the model performance of these encodings using objective ...
Listeners' expectations for melodies and harmonies in tonal music are perhaps the most studied aspec...
We address the challenging open problem of learning an effective latent space for symbolic music da...
Analogy-making is a key method for computer algorithms to generate both natural and creative music p...
Generative models aim to understand the properties of data, through the construction of latent space...
In this paper, we learn disentangled representations of timbre and pitch for musical instrument soun...
The research in Deep Learning applications in sound and music computing have gathered an interest in...
Previously, artificial neural networks have been used to capture only the informal properties of mus...
The perception of tonal structure in music seems to be rooted both in low-level perceptual mechanism...
Pitch-class distributions are of central relevance in music information retrieval, computational mus...
Variational Autoencoders (VAEs) constitute one of the most significant deep generative models for th...
In his 2001 monograph Tonal Pitch Space, Fred Lerdahl defined a distance function over tonal and pos...
The aim of the thesis is the design and evaluation of a generative model based on deep learning for ...
Listeners' expectations for melodies and harmonies in tonal music are perhaps the most studied aspec...
Some forms of artificial neural network models develop representations that have a high visual infor...
In this paper we extend R-VAE, a system designed for the modeling and exploration of latent spaces o...
Listeners' expectations for melodies and harmonies in tonal music are perhaps the most studied aspec...
We address the challenging open problem of learning an effective latent space for symbolic music da...
Analogy-making is a key method for computer algorithms to generate both natural and creative music p...
Generative models aim to understand the properties of data, through the construction of latent space...
In this paper, we learn disentangled representations of timbre and pitch for musical instrument soun...
The research in Deep Learning applications in sound and music computing have gathered an interest in...
Previously, artificial neural networks have been used to capture only the informal properties of mus...
The perception of tonal structure in music seems to be rooted both in low-level perceptual mechanism...
Pitch-class distributions are of central relevance in music information retrieval, computational mus...
Variational Autoencoders (VAEs) constitute one of the most significant deep generative models for th...
In his 2001 monograph Tonal Pitch Space, Fred Lerdahl defined a distance function over tonal and pos...
The aim of the thesis is the design and evaluation of a generative model based on deep learning for ...
Listeners' expectations for melodies and harmonies in tonal music are perhaps the most studied aspec...
Some forms of artificial neural network models develop representations that have a high visual infor...
In this paper we extend R-VAE, a system designed for the modeling and exploration of latent spaces o...
Listeners' expectations for melodies and harmonies in tonal music are perhaps the most studied aspec...
We address the challenging open problem of learning an effective latent space for symbolic music da...
Analogy-making is a key method for computer algorithms to generate both natural and creative music p...