Computerized analysis and classification of folk songs receives increased attention in recent years. In this paper, we demonstrate a two-case German and Austrian folk song classification using the musical feature density map (MFDMap) as the musical features representation and the finite impulse response extreme learning machine (FIR-ELM) as the machine classifier. Fifteen different MFDMaps are designed to study the music properties that aid in characterizing the differences. Our simulations show that the FIR-ELM classifier can achieve 83% classification accuracy using the MFDMap with interval, duration and duration ratio features
Thirteen different compression algorithms were used to calculate the normalized compression distance...
Abstract—Music genre classification is an essential component for the music information retrieval sy...
The automatic analysis of large musical corpora by means of computational models overcomes some limi...
This thesis investigates the application of a few powerful machine learning techniques in music clas...
Multilayer feedforward neural networks trained via supervised learning have proven to be successful ...
Over the last years, automatic music classification has become a standard benchmark problem in the m...
Thirteen different compression algorithms were used to calculate the normalized compression distance...
In this thesis the automatic recognition of groups in singing recordings is presented. The classific...
With the high increase in the availability of digital music, it has become of interest to automatica...
In computational approaches to the study of variation among folk song melodies from oral culture, bo...
In the thesis, we implemented an algorithm that automatically recognizes an instrument in Slovene Fo...
A central problem in music information retrieval is audio-based music classification. Current music ...
According to musicological studies on oral transmission, repeated patterns are considered important ...
This work defines useful features for the classification of symbolically encoded music into 14 class...
More and more researchers are starting to explore the field of automatic recognition of musical inst...
Thirteen different compression algorithms were used to calculate the normalized compression distance...
Abstract—Music genre classification is an essential component for the music information retrieval sy...
The automatic analysis of large musical corpora by means of computational models overcomes some limi...
This thesis investigates the application of a few powerful machine learning techniques in music clas...
Multilayer feedforward neural networks trained via supervised learning have proven to be successful ...
Over the last years, automatic music classification has become a standard benchmark problem in the m...
Thirteen different compression algorithms were used to calculate the normalized compression distance...
In this thesis the automatic recognition of groups in singing recordings is presented. The classific...
With the high increase in the availability of digital music, it has become of interest to automatica...
In computational approaches to the study of variation among folk song melodies from oral culture, bo...
In the thesis, we implemented an algorithm that automatically recognizes an instrument in Slovene Fo...
A central problem in music information retrieval is audio-based music classification. Current music ...
According to musicological studies on oral transmission, repeated patterns are considered important ...
This work defines useful features for the classification of symbolically encoded music into 14 class...
More and more researchers are starting to explore the field of automatic recognition of musical inst...
Thirteen different compression algorithms were used to calculate the normalized compression distance...
Abstract—Music genre classification is an essential component for the music information retrieval sy...
The automatic analysis of large musical corpora by means of computational models overcomes some limi...