Advances in Recurrent Neural Network (RNN) techniques have caused an explosion of problems posed that revolve around the mass analysis and generation of sequential data, including symbolic music. Building off the work of Nathaniel Patterson’s Musical Autocomplete: An LSTM Approach, we extend this problem of continuing a composition by examining the creative impact that injecting latent-space encoded image data, specifically fine art from the WikiArt Dataset (Saleh & Elgammal), has on the musical output of RNN architectures designed for autocomplete. For comparison purposes with Patterson, we will also be using a corpus of Erik Satie’s piano music for training, validation, and testing
A big challenge in algorithmic composition is to devise a model that is both easily trainable and ab...
We discuss our work in modelling and generating music transcriptions using deep recurrent neural net...
Modelling musical structure is vital yet challenging for artificial intelligence systems that genera...
In this paper, we introduce new methods and discuss results of text-based LSTM (Long Short-Term Memo...
In this paper, we introduce new methods and discuss results of text-based LSTM (Long Short-Term Memo...
This document describes using recurrent neural networks for generating clasicial piano music. It als...
Music generation is increasingly recognized as an attractive field of study in Deep Learning. This p...
Recently, there has been a tremendous increase in generating and synthesizing music and art using va...
A fledgling technological with extraordinary potential, artificial neural networks have risen to pro...
Music Inpainting is the task of filling in missing or lost information in a piece of music. We inves...
In algorithmic music composition, a simple technique involves selecting notes sequentially according...
The ability to generate original music is a significant milestone for the application of artificial ...
Deep learning, one of the fastest-growing branches of artificial intelligence, has become one of the...
AbstractIn this paper, we develop associative memorization architecture of the musical features from...
The aim of the thesis is the design and evaluation of a generative model based on deep learning for ...
A big challenge in algorithmic composition is to devise a model that is both easily trainable and ab...
We discuss our work in modelling and generating music transcriptions using deep recurrent neural net...
Modelling musical structure is vital yet challenging for artificial intelligence systems that genera...
In this paper, we introduce new methods and discuss results of text-based LSTM (Long Short-Term Memo...
In this paper, we introduce new methods and discuss results of text-based LSTM (Long Short-Term Memo...
This document describes using recurrent neural networks for generating clasicial piano music. It als...
Music generation is increasingly recognized as an attractive field of study in Deep Learning. This p...
Recently, there has been a tremendous increase in generating and synthesizing music and art using va...
A fledgling technological with extraordinary potential, artificial neural networks have risen to pro...
Music Inpainting is the task of filling in missing or lost information in a piece of music. We inves...
In algorithmic music composition, a simple technique involves selecting notes sequentially according...
The ability to generate original music is a significant milestone for the application of artificial ...
Deep learning, one of the fastest-growing branches of artificial intelligence, has become one of the...
AbstractIn this paper, we develop associative memorization architecture of the musical features from...
The aim of the thesis is the design and evaluation of a generative model based on deep learning for ...
A big challenge in algorithmic composition is to devise a model that is both easily trainable and ab...
We discuss our work in modelling and generating music transcriptions using deep recurrent neural net...
Modelling musical structure is vital yet challenging for artificial intelligence systems that genera...