In this paper, the problem of multiple speaker localization via speech separation based on model-based sparse recovery is studies. We compare and contrast computational sparse optimization methods incorporating harmonicity and block structures as well as autoregressive dependencies underlying spectrographic representation of speech signals. The results demonstrate the effectiveness of block sparse Bayesian learning framework incorporating autoregressive correlations to achieve a highly accurate localization performance. Furthermore, significant improvement is obtained using ad-hoc microphones for data acquisition set-up compared to the compact microphone array
model-based sparse component analysis framework was established in Chapter 3 along with the three fu...
We tackle the speech separation problem through modeling the acoustics of the reverberant chambers. ...
The thesis investigates the challenges of speaker localization in presence of strong reverberation, ...
This paper studies the problem of multiple speaker localization via speech separation based on model...
In this paper, the problem of speech source localization and separation from recordings of convoluti...
We study the sparsity of spectro-temporal representation of speech in reverberant acoustic condition...
We cast the under-determined convolutive speech separation as sparse approximation of the spatial sp...
We leverage the recent algorithmic advances in compressive sensing, and propose a novel source separ...
In this paper we demonstrate that recently-developed sparse recov-ery algorithms can be used to impr...
We address the problem of microphone location cali- bration where the sensor positions have a sparse...
Abstract(#br)The presence of far-field noise and reverberation poses significant challenges to the c...
We leverage the recent algorithmic advances in compressive sensing, and propose a novel source separ...
Localizing multiple sound sources in reverberant environments is a challenging problem in acoustic ...
Sparse representation techniques have become increasingly promising for localizing the sound source ...
A novel formulation of acoustic multipath is proposed for estimation of the room acoustic using reco...
model-based sparse component analysis framework was established in Chapter 3 along with the three fu...
We tackle the speech separation problem through modeling the acoustics of the reverberant chambers. ...
The thesis investigates the challenges of speaker localization in presence of strong reverberation, ...
This paper studies the problem of multiple speaker localization via speech separation based on model...
In this paper, the problem of speech source localization and separation from recordings of convoluti...
We study the sparsity of spectro-temporal representation of speech in reverberant acoustic condition...
We cast the under-determined convolutive speech separation as sparse approximation of the spatial sp...
We leverage the recent algorithmic advances in compressive sensing, and propose a novel source separ...
In this paper we demonstrate that recently-developed sparse recov-ery algorithms can be used to impr...
We address the problem of microphone location cali- bration where the sensor positions have a sparse...
Abstract(#br)The presence of far-field noise and reverberation poses significant challenges to the c...
We leverage the recent algorithmic advances in compressive sensing, and propose a novel source separ...
Localizing multiple sound sources in reverberant environments is a challenging problem in acoustic ...
Sparse representation techniques have become increasingly promising for localizing the sound source ...
A novel formulation of acoustic multipath is proposed for estimation of the room acoustic using reco...
model-based sparse component analysis framework was established in Chapter 3 along with the three fu...
We tackle the speech separation problem through modeling the acoustics of the reverberant chambers. ...
The thesis investigates the challenges of speaker localization in presence of strong reverberation, ...