Based on the adaptive particle swarm algorithm and error backpropagation neural network, this paper proposes methods for different styles of music classification and migration visualization. This method has the advantages of simple structure, mature algorithm, and accurate optimization. It can find better network weights and thresholds so that particles can jump out of the local optimal solutions previously searched and search in a larger space. The global search uses the gradient method to accelerate the optimization and control the real-time generation effect of the music style transfer, thereby improving the learning performance and convergence performance of the entire network, ultimately improving the recognition rate of the entire sys...
This thesis consideres the problem of optical music recognition from images to text using Artificial...
Style recognition is one of the problems mostly faced by Computational Intelligence techniques. Most...
Utilizing deep learning techniques to generate musical contents has caught wide attention in recent ...
In this paper, based on computer reading and processing of music frequency, amplitude, timbre, image...
We introduce MIDI-VAE, a neural network model based on Variational Autoencoders that is capable of h...
We introduce MIDI-VAE, a neural network model based on Variational Autoencoders that is capable of h...
In this paper we address the problem of musical style classification. This problem has several appli...
Led by the success of neural style transfer on visual arts, there has been a rising trend very recen...
Musical genres are defined as categorical labels that auditors use to characterize pieces of music s...
Music is the most convenient and easy-to-use stress release tool in modern times. Many studies have ...
Style recognition is one of the problems mostly faced by Computational Intelligence techniques. Most...
Style recognition is one of the problems mostly faced by Computational Intelligence techniques. Most...
Style recognition is one of the problems mostly faced by Computational Intelligence techniques. Most...
Music visualisation has become an integral part of music performance, appreciation and study. Even b...
Much of the work on perception and understanding of music by computers has focused on low-level perc...
This thesis consideres the problem of optical music recognition from images to text using Artificial...
Style recognition is one of the problems mostly faced by Computational Intelligence techniques. Most...
Utilizing deep learning techniques to generate musical contents has caught wide attention in recent ...
In this paper, based on computer reading and processing of music frequency, amplitude, timbre, image...
We introduce MIDI-VAE, a neural network model based on Variational Autoencoders that is capable of h...
We introduce MIDI-VAE, a neural network model based on Variational Autoencoders that is capable of h...
In this paper we address the problem of musical style classification. This problem has several appli...
Led by the success of neural style transfer on visual arts, there has been a rising trend very recen...
Musical genres are defined as categorical labels that auditors use to characterize pieces of music s...
Music is the most convenient and easy-to-use stress release tool in modern times. Many studies have ...
Style recognition is one of the problems mostly faced by Computational Intelligence techniques. Most...
Style recognition is one of the problems mostly faced by Computational Intelligence techniques. Most...
Style recognition is one of the problems mostly faced by Computational Intelligence techniques. Most...
Music visualisation has become an integral part of music performance, appreciation and study. Even b...
Much of the work on perception and understanding of music by computers has focused on low-level perc...
This thesis consideres the problem of optical music recognition from images to text using Artificial...
Style recognition is one of the problems mostly faced by Computational Intelligence techniques. Most...
Utilizing deep learning techniques to generate musical contents has caught wide attention in recent ...