A new singer identification system is presented in this thesis. The system is based on the idea of using only the vocal segments of a song to build the model of a particular singer. The most important contribution of the technique is the way these vocal segments are located. The borders between vocal and instrumental parts are first detected with the Bayesian Information Criterion(BIC), which is fed with our new panning coefficients. Then, each segment is classified as vocal or instrumental by a decision tree based on MFCCs. Having vocal segments located, our method works like most speaker identification systems do, that is, by training a GMM for each singer through the Expectation-Maximization algorithm. The performance of the singer ident...
Oftentimes when we listen to a familiar singer, the unique qual-ities of that performer’s voice allo...
The detection of singing voice segments within music signals is an important object of research in t...
In this thesis the automatic recognition of groups in singing recordings is presented. The classific...
We propose a novel method to identify the singer of a query song from the audio database. The databa...
Abstract — Singing voice identification is different from speaker recognition as there are significa...
As part of a project on indexing ethno-musicological audio recordings, segmentation in singer turns ...
This thesis focuses on presenting a technique on improving current vocal detection methods. One of t...
Abstract—In this paper, the problem of the automatic identification of a singer is investigated usin...
Trained human listeners show a remarkable ability to identify singers from their voices alone even i...
Abstract—Song and music discrimination play a significant role in multimedia applications such as ge...
Automatic language identification for singing is a topic that has not received much attention for th...
This thesis proposes signal processing methods for analysis of singing voice audio signals, with the...
This dissertation is concerned with the problem of describing the singing voice within the audio sig...
Automated singer identification is important in organising, browsing and retrieving data in large mu...
Over the past decade, there has been explosive growth in the availability of multimedia data, partic...
Oftentimes when we listen to a familiar singer, the unique qual-ities of that performer’s voice allo...
The detection of singing voice segments within music signals is an important object of research in t...
In this thesis the automatic recognition of groups in singing recordings is presented. The classific...
We propose a novel method to identify the singer of a query song from the audio database. The databa...
Abstract — Singing voice identification is different from speaker recognition as there are significa...
As part of a project on indexing ethno-musicological audio recordings, segmentation in singer turns ...
This thesis focuses on presenting a technique on improving current vocal detection methods. One of t...
Abstract—In this paper, the problem of the automatic identification of a singer is investigated usin...
Trained human listeners show a remarkable ability to identify singers from their voices alone even i...
Abstract—Song and music discrimination play a significant role in multimedia applications such as ge...
Automatic language identification for singing is a topic that has not received much attention for th...
This thesis proposes signal processing methods for analysis of singing voice audio signals, with the...
This dissertation is concerned with the problem of describing the singing voice within the audio sig...
Automated singer identification is important in organising, browsing and retrieving data in large mu...
Over the past decade, there has been explosive growth in the availability of multimedia data, partic...
Oftentimes when we listen to a familiar singer, the unique qual-ities of that performer’s voice allo...
The detection of singing voice segments within music signals is an important object of research in t...
In this thesis the automatic recognition of groups in singing recordings is presented. The classific...