Attentional networks for music generation

02/06/2020
by   Gullapalli Keerti, et al.
0

Realistic music generation has always remained as a challenging problem as it may lack structure or rationality. In this work, we propose a deep learning based music generation method in order to produce old style music particularly JAZZ with rehashed melodic structures utilizing a Bi-directional Long Short Term Memory (Bi-LSTM) Neural Network with Attention. Owing to the success in modelling long-term temporal dependencies in sequential data and its success in case of videos, Bi-LSTMs with attention serve as the natural choice and early utilization in music generation. We validate in our experiments that Bi-LSTMs with attention are able to preserve the richness and technical nuances of the music performed.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/16/2020

LSTM Networks for Music Generation

The paper presents a method of the music generation based on LSTM (Long ...
research
11/02/2020

Using a Bi-directional LSTM Model with Attention Mechanism trained on MIDI Data for Generating Unique Music

Generating music is an interesting and challenging problem in the field ...
research
06/19/2022

Towards building a Deep Learning based Automated Indian Classical Music Tutor for the Masses

Music can play an important role in the well-being of the world. Indian ...
research
11/14/2018

Melodic Phrase Segmentation By Deep Neural Networks

Automated melodic phrase detection and segmentation is a classical task ...
research
10/15/2020

Music Classification in MIDI Format based on LSTM Mdel

Music classification between music made by AI or human composers can be ...
research
07/07/2019

Melody Generation using an Interactive Evolutionary Algorithm

Music generation with the aid of computers has been recently grabbed the...
research
07/05/2019

A Bi-directional Transformer for Musical Chord Recognition

Chord recognition is an important task since chords are highly abstract ...

Please sign up or login with your details

Forgot password? Click here to reset