Deep neural networks have become a cornerstone in various recognition and classification tasks due to their ability to learn complex patterns from raw data. This paper explores the potential application of neural networks in the domain of vocal extraction. We investigate the utilization of neural network architectures, specifically the deep clustering model based on recurrent neural networks (RNNs) and the U-net model based on convolutional neural networks (CNNs), for the task of vocal track extraction. Additionally, we propose a novel hybrid approach that incorporates a pretrained RNN model to enhance the performance of the U-net model in vocal track extraction
Deep learning can be used for audio signal classification in a variety of ways. It can be used to de...
This paper discusses applying different types of neural networks to classify a dataset of type audio...
In computer vision, state-of-the-art object recognition sys-tems rely on label-preserving image tran...
Deep neural networks have become a cornerstone in various recognition and classification tasks due t...
Deep neural networks have become a cornerstone in various recognition and classification tasks due t...
This paper presents two systems for extracting the vocals from a musical piece. Vocals extraction fi...
Singing melody extraction essentially involves two tasks: one is detecting the activity of a singing...
State-of-the-art singing voice separation is based on deep learning making use of CNN structures wit...
Monaural source separation is a challenging issue due to the fact that there is only a single channe...
Deep neural networks have become a veritable alternative to classic speaker recognition and clusteri...
I. PROJECT OVERVIEW A. Research Question In this project, the question was asked: ”Is there an easie...
We propose an automatic data processing pipeline to extract vocal productions from large-scale natur...
I. PROJECT OVERVIEW A. Research Question In this project, the question was asked: ”Is there an easie...
Identification and extraction of singing voice from within musical mixtures is a key challenge in so...
In computer vision, state-of-the-art object recognition sys-tems rely on label-preserving image tran...
Deep learning can be used for audio signal classification in a variety of ways. It can be used to de...
This paper discusses applying different types of neural networks to classify a dataset of type audio...
In computer vision, state-of-the-art object recognition sys-tems rely on label-preserving image tran...
Deep neural networks have become a cornerstone in various recognition and classification tasks due t...
Deep neural networks have become a cornerstone in various recognition and classification tasks due t...
This paper presents two systems for extracting the vocals from a musical piece. Vocals extraction fi...
Singing melody extraction essentially involves two tasks: one is detecting the activity of a singing...
State-of-the-art singing voice separation is based on deep learning making use of CNN structures wit...
Monaural source separation is a challenging issue due to the fact that there is only a single channe...
Deep neural networks have become a veritable alternative to classic speaker recognition and clusteri...
I. PROJECT OVERVIEW A. Research Question In this project, the question was asked: ”Is there an easie...
We propose an automatic data processing pipeline to extract vocal productions from large-scale natur...
I. PROJECT OVERVIEW A. Research Question In this project, the question was asked: ”Is there an easie...
Identification and extraction of singing voice from within musical mixtures is a key challenge in so...
In computer vision, state-of-the-art object recognition sys-tems rely on label-preserving image tran...
Deep learning can be used for audio signal classification in a variety of ways. It can be used to de...
This paper discusses applying different types of neural networks to classify a dataset of type audio...
In computer vision, state-of-the-art object recognition sys-tems rely on label-preserving image tran...