Singing voice detection is still a challenging task because the voice can be obscured by instruments having the same frequency band, and even the same timbre, produced by mimicking the mechanism of human singing. Because of the poor adaptability and complexity of feature engineering, there is a recent trend towards feature learning in which deep neural networks play the roles of feature extraction and classification. In this paper, we present two methods to explore the channel properties in the convolution neural network to improve the performance of singing voice detection by feature learning. First, channel attention learning is presented to measure the importance of a feature, in which two attention mechanisms are exploited, i.e., the sc...
We conduct an investigation on various hyper-parameters regarding neural networks used to generate s...
In the early stage of vocal music education, students generally do not understand the structure of t...
International audienceWe conduct an investigation on various hyperparameters regarding neural networ...
Singing voice detection is still a challenging task because the voice can be obscured by instruments...
Singing voice detection is still a challenging task because the voice can be obscured by instruments...
In computer vision, state-of-the-art object recognition sys-tems rely on label-preserving image tran...
Singing melody extraction essentially involves two tasks: one is detecting the activity of a singing...
In computer vision, state-of-the-art object recognition sys-tems rely on label-preserving image tran...
Human voice recognition is a crucial task in music information retrieval. In this master thesis we d...
State-of-the-art singing voice detectors are based on classifiers trained on annotated examples. As ...
Deep neural networks with convolutional layers usually process the entire spectrogram of an audio si...
Singing voice detection or vocal detection is a classification task that determines whether there is...
Comunicació presentada a la EUSIPCO 2017: 25th European Signal Processing Conference, celebrada els ...
In the early stage of vocal music education, students generally do not understand the structure of t...
Automatic sung speech recognition is a challenging problem that remains largely unsolved. Challenges...
We conduct an investigation on various hyper-parameters regarding neural networks used to generate s...
In the early stage of vocal music education, students generally do not understand the structure of t...
International audienceWe conduct an investigation on various hyperparameters regarding neural networ...
Singing voice detection is still a challenging task because the voice can be obscured by instruments...
Singing voice detection is still a challenging task because the voice can be obscured by instruments...
In computer vision, state-of-the-art object recognition sys-tems rely on label-preserving image tran...
Singing melody extraction essentially involves two tasks: one is detecting the activity of a singing...
In computer vision, state-of-the-art object recognition sys-tems rely on label-preserving image tran...
Human voice recognition is a crucial task in music information retrieval. In this master thesis we d...
State-of-the-art singing voice detectors are based on classifiers trained on annotated examples. As ...
Deep neural networks with convolutional layers usually process the entire spectrogram of an audio si...
Singing voice detection or vocal detection is a classification task that determines whether there is...
Comunicació presentada a la EUSIPCO 2017: 25th European Signal Processing Conference, celebrada els ...
In the early stage of vocal music education, students generally do not understand the structure of t...
Automatic sung speech recognition is a challenging problem that remains largely unsolved. Challenges...
We conduct an investigation on various hyper-parameters regarding neural networks used to generate s...
In the early stage of vocal music education, students generally do not understand the structure of t...
International audienceWe conduct an investigation on various hyperparameters regarding neural networ...