Drawing an analogy with automatic image completion systems, we propose Music SketchNet, a neural network framework that allows users to specify partial musical ideas guiding automatic music generation. We focus on generating the missing measures in incomplete monophonic musical pieces, conditioned on surrounding context, and optionally guided by user-specified pitch and rhythm snippets. First, we introduce SketchVAE, a novel variational autoencoder that explicitly factorizes rhythm and pitch contour to form the basis of our proposed model. Then we introduce two discriminative architectures, SketchInpainter and SketchConnector, that in conjunction perform the guided music completion, filling in representations for the missing measures condit...
Practicing musical instruments can be experienced as repetitive and boring and is often a major barr...
In the field of automatic music generation, one of the greatest challenges is the consistent generat...
Existing automatic music generation approaches that feature deep learning can be broadly classified ...
Drawing an analogy with automatic image completion systems, we propose Music SketchNet, a neural net...
Automatic music generation is an attractive topic in the interdisciplinary field of music and comput...
Music Inpainting is the task of filling in missing or lost information in a piece of music. We inves...
Generating music has a few notable differences from generating images and videos. First, music is an...
The aim of this thesis is to explore new ways of generating unique polyphonic music using neural net...
Automatic music generation has been gaining more attention in recent years. Existing approaches, how...
Music creation is typically composed of two parts: composing the musical score, and then performing ...
Automatic music generation is an interdisciplinary research topic that combines computational creati...
We introduce a machine learning technique to autonomously generate novel melodies that are variation...
The aim of the thesis is the design and evaluation of a generative model based on deep learning for ...
When writing pop or hip-hop music, musicians sometimes sample from other songs and fuse the samples ...
Human usually composes music by organizing elements according to the musical form to express music i...
Practicing musical instruments can be experienced as repetitive and boring and is often a major barr...
In the field of automatic music generation, one of the greatest challenges is the consistent generat...
Existing automatic music generation approaches that feature deep learning can be broadly classified ...
Drawing an analogy with automatic image completion systems, we propose Music SketchNet, a neural net...
Automatic music generation is an attractive topic in the interdisciplinary field of music and comput...
Music Inpainting is the task of filling in missing or lost information in a piece of music. We inves...
Generating music has a few notable differences from generating images and videos. First, music is an...
The aim of this thesis is to explore new ways of generating unique polyphonic music using neural net...
Automatic music generation has been gaining more attention in recent years. Existing approaches, how...
Music creation is typically composed of two parts: composing the musical score, and then performing ...
Automatic music generation is an interdisciplinary research topic that combines computational creati...
We introduce a machine learning technique to autonomously generate novel melodies that are variation...
The aim of the thesis is the design and evaluation of a generative model based on deep learning for ...
When writing pop or hip-hop music, musicians sometimes sample from other songs and fuse the samples ...
Human usually composes music by organizing elements according to the musical form to express music i...
Practicing musical instruments can be experienced as repetitive and boring and is often a major barr...
In the field of automatic music generation, one of the greatest challenges is the consistent generat...
Existing automatic music generation approaches that feature deep learning can be broadly classified ...