Singing voice separation based on deep learning relies on the usage of time-frequency masking. In many cases the masking process is not a learnable function or is not encapsulated into the deep learning optimization. Consequently, most of the existing methods rely on a post processing step using the generalized Wiener filtering. This work proposes a method that learns and optimizes (during training) a source-dependent mask and does not need the aforementioned post processing step. We introduce a recurrent inference algorithm, a sparse transformation step to improve the mask generation process, and a learned denoising filter. Obtained results show an increase of 0.49 dB for the signal to distortion ratio and 0.30 dB for the signal to interfe...
[[abstract]]Monaural singing voice separation is an extremely challenging problem. While efforts in ...
State-of-the-art singing voice separation is based on deep learning making use of CNN structures wit...
This work proposes a simple but effective attention mechanism, namely Skip Attention (SA), for monau...
The objective of deep learning methods based on encoder-decoder architectures for music source separ...
Abstract—Monaural source separation is important for many real world applications. It is challenging...
Monaural singing voice separation has received much attention in recent years. In this paper, we pro...
Support material (binary files) for the following work: S.I. Mimilakis, K. Drossos, J.F. Santos, G. ...
Audio Source Separation concerns the field of study, where the general aim is to isolate the sources...
Monaural source separation is a challenging issue due to the fact that there is only a single channe...
Notable progress in music source separation has been achieved using multi-branch networks that opera...
Identification and extraction of singing voice from within musical mixtures is a key challenge in so...
State-of-the-art methods for monaural singing voice separation consist in estimating the magnitude s...
This paper presents a novel framework that improves both vocal fun-damental frequency (F0) estimatio...
Monaural source separation is useful for many real-world ap-plications though it is a challenging pr...
Monaural source separation is useful for many real-world ap-plications though it is a challenging pr...
[[abstract]]Monaural singing voice separation is an extremely challenging problem. While efforts in ...
State-of-the-art singing voice separation is based on deep learning making use of CNN structures wit...
This work proposes a simple but effective attention mechanism, namely Skip Attention (SA), for monau...
The objective of deep learning methods based on encoder-decoder architectures for music source separ...
Abstract—Monaural source separation is important for many real world applications. It is challenging...
Monaural singing voice separation has received much attention in recent years. In this paper, we pro...
Support material (binary files) for the following work: S.I. Mimilakis, K. Drossos, J.F. Santos, G. ...
Audio Source Separation concerns the field of study, where the general aim is to isolate the sources...
Monaural source separation is a challenging issue due to the fact that there is only a single channe...
Notable progress in music source separation has been achieved using multi-branch networks that opera...
Identification and extraction of singing voice from within musical mixtures is a key challenge in so...
State-of-the-art methods for monaural singing voice separation consist in estimating the magnitude s...
This paper presents a novel framework that improves both vocal fun-damental frequency (F0) estimatio...
Monaural source separation is useful for many real-world ap-plications though it is a challenging pr...
Monaural source separation is useful for many real-world ap-plications though it is a challenging pr...
[[abstract]]Monaural singing voice separation is an extremely challenging problem. While efforts in ...
State-of-the-art singing voice separation is based on deep learning making use of CNN structures wit...
This work proposes a simple but effective attention mechanism, namely Skip Attention (SA), for monau...