PhD ThesisBlind Source Separation (BSS) attempts to automatically extract and track a signal of interest in real world scenarios with other signals present. BSS addresses the problem of recovering the original signals from an observed mixture without relying on training knowledge. This research studied three novel approaches for solving the BSS problem based on the extensions of non-negative matrix factorization model and the sparsity regularization methods. 1) A framework of amalgamating pruning and Bayesian regularized cluster nonnegative tensor factorization with Itakura-Saito divergence for separating sources mixed in a stereo channel format: The sparse regularization term was adaptively tuned using a hierarchical Bayesian approach to ...
Abstract—We consider inference in a general data-driven ob-ject-based model of multichannel audio da...
peer reviewedThis paper addresses the separation of audio sources from convolutive mixtures captu...
Mirzaei S., Van hamme H., Norouzi Y., ''Under-determined reverberant audio source separation using B...
A novel approach for solving the single-channel signal separation is presented the proposed sparse n...
Mirzaei S., Van hamme H., Norouzi Y., ''Blind audio source separation of stereo mixtures using Bayes...
In applications such as speech and audio denoising, music tran-scription, music and audio based fore...
A novel unsupervised machine learning algorithm for single channel source separation is presented. T...
We propose an unsupervised inference procedure for audio source separation. Components in nonnegativ...
Mirzaei S., Van hamme H., Norouzi Y., ''Blind audio source separation of stereo mixtures using Bayes...
Blind source separation (BSS), aimed at estimation of original source signals from their mixtures wi...
In this work, we propose solutions to the problem of audio source separation from a single recording...
In this work, we propose solutions to the problem of audio source separation from a single recording...
The significance of speech recognition systems is widespread, encompassing applications like speech ...
Source separation arises in a variety of signal processing applications, ranging from speech proces...
The objective of single-channel source separation is to accurately recover source signals from mixtu...
Abstract—We consider inference in a general data-driven ob-ject-based model of multichannel audio da...
peer reviewedThis paper addresses the separation of audio sources from convolutive mixtures captu...
Mirzaei S., Van hamme H., Norouzi Y., ''Under-determined reverberant audio source separation using B...
A novel approach for solving the single-channel signal separation is presented the proposed sparse n...
Mirzaei S., Van hamme H., Norouzi Y., ''Blind audio source separation of stereo mixtures using Bayes...
In applications such as speech and audio denoising, music tran-scription, music and audio based fore...
A novel unsupervised machine learning algorithm for single channel source separation is presented. T...
We propose an unsupervised inference procedure for audio source separation. Components in nonnegativ...
Mirzaei S., Van hamme H., Norouzi Y., ''Blind audio source separation of stereo mixtures using Bayes...
Blind source separation (BSS), aimed at estimation of original source signals from their mixtures wi...
In this work, we propose solutions to the problem of audio source separation from a single recording...
In this work, we propose solutions to the problem of audio source separation from a single recording...
The significance of speech recognition systems is widespread, encompassing applications like speech ...
Source separation arises in a variety of signal processing applications, ranging from speech proces...
The objective of single-channel source separation is to accurately recover source signals from mixtu...
Abstract—We consider inference in a general data-driven ob-ject-based model of multichannel audio da...
peer reviewedThis paper addresses the separation of audio sources from convolutive mixtures captu...
Mirzaei S., Van hamme H., Norouzi Y., ''Under-determined reverberant audio source separation using B...