The field of Automatic Music Generation has seen significant progress thanks to the advent of Deep Learning. However, most of these results have been produced by unconditional models, which lack the ability to interact with their users, not allowing them to guide the generative process in meaningful and practical ways. Moreover, synthesizing music that remains coherent across longer timescales while still capturing the local aspects that make it sound ``realistic'' or human-like is still challenging. This is due to the large computational requirements needed to work with long sequences of data, and also to limitations imposed by the training schemes that are often employed. In this paper, we propose a generative model of symbolic music cond...
Machine learning is a methodology of data analysis that allows software to learn about data, identif...
https://aimc2023.pubpub.org/pub/9z68g7d2 Music has been commonly recognized as a means of expressin...
In the field of Music Information Retrieval, there are many tasks that are not only difficult for ma...
The field of Automatic Music Generation has seen significant progress thanks to the advent of Deep L...
Deep Learning models have shown very promising results in automatically composing polyphonic music p...
With the advancement of artificial intelligence techniques in recent years, the task of music genera...
In this paper we present a new approach for the generation of multi-instrument symbolic music driven...
Music emotion recognition (MER) deals with music classification by emotion using signal processing a...
The rapid increase in the importance of human-machine interaction and the accelerating pace of life ...
Deep generative models are currently the leading method for algorithmic music composition. However, ...
We demonstrate a method to locate relations and con-straints between a music score and its impressio...
Generate music using emotional semantics of an image is quiet challenging task due to the complexit...
We propose and assess deep learning models for harmonic and tempo arrangement generation given melod...
International audienceThis paper presents an architecture for generating music for video games based...
The medium of music has evolved specifically for the expression of emotions, and it is natural for u...
Machine learning is a methodology of data analysis that allows software to learn about data, identif...
https://aimc2023.pubpub.org/pub/9z68g7d2 Music has been commonly recognized as a means of expressin...
In the field of Music Information Retrieval, there are many tasks that are not only difficult for ma...
The field of Automatic Music Generation has seen significant progress thanks to the advent of Deep L...
Deep Learning models have shown very promising results in automatically composing polyphonic music p...
With the advancement of artificial intelligence techniques in recent years, the task of music genera...
In this paper we present a new approach for the generation of multi-instrument symbolic music driven...
Music emotion recognition (MER) deals with music classification by emotion using signal processing a...
The rapid increase in the importance of human-machine interaction and the accelerating pace of life ...
Deep generative models are currently the leading method for algorithmic music composition. However, ...
We demonstrate a method to locate relations and con-straints between a music score and its impressio...
Generate music using emotional semantics of an image is quiet challenging task due to the complexit...
We propose and assess deep learning models for harmonic and tempo arrangement generation given melod...
International audienceThis paper presents an architecture for generating music for video games based...
The medium of music has evolved specifically for the expression of emotions, and it is natural for u...
Machine learning is a methodology of data analysis that allows software to learn about data, identif...
https://aimc2023.pubpub.org/pub/9z68g7d2 Music has been commonly recognized as a means of expressin...
In the field of Music Information Retrieval, there are many tasks that are not only difficult for ma...