cMelGAN: An Efficient Conditional Generative Model Based on Mel Spectrograms

05/15/2022
by   Tracy Qian, et al.
17

Analysing music in the field of machine learning is a very difficult problem with numerous constraints to consider. The nature of audio data, with its very high dimensionality and widely varying scales of structure, is one of the primary reasons why it is so difficult to model. There are many applications of machine learning in music, like the classifying the mood of a piece of music, conditional music generation, or popularity prediction. The goal for this project was to develop a genre-conditional generative model of music based on Mel spectrograms and evaluate its performance by comparing it to existing generative music models that use note-based representations. We initially implemented an autoregressive, RNN-based generative model called MelNet . However, due to its slow speed and low fidelity output, we decided to create a new, fully convolutional architecture that is based on the MelGAN [4] and conditional GAN architectures, called cMelGAN.

READ FULL TEXT

page 2

page 5

page 7

page 17

research
08/11/2023

An Autoethnographic Exploration of XAI in Algorithmic Composition

Machine Learning models are capable of generating complex music across a...
research
02/26/2020

Conditional Sampling from Invertible Generative Models with Applications to Inverse Problems

We consider uncertainty aware compressive sensing when the prior distrib...
research
07/04/2019

Neural Drum Machine : An Interactive System for Real-time Synthesis of Drum Sounds

In this work, we introduce a system for real-time generation of drum sou...
research
03/20/2017

Dance Dance Convolution

Dance Dance Revolution (DDR) is a popular rhythm-based video game. Playe...
research
01/19/2021

A framework to compare music generative models using automatic evaluation metrics extended to rhythm

To train a machine learning model is necessary to take numerous decision...
research
11/18/2018

Harmonic Recomposition using Conditional Autoregressive Modeling

We demonstrate a conditional autoregressive pipeline for efficient music...
research
12/12/2016

A Unit Selection Methodology for Music Generation Using Deep Neural Networks

Several methods exist for a computer to generate music based on data inc...

Please sign up or login with your details

Forgot password? Click here to reset