International audienceThe characterization of acoustic sources is of great interest in many industrial applications, in particular for the aeronautic or automotive industry for the development of new products. While localization of sources using observations from a wind tunnel is a well-known subject, the characterization and separation of the sources still needs to be explored. We present here a Bayesian approach for sources separation. Two prior modeling of the sources are considered: a sparsity inducing prior in the frequency domain and an auto-regressive model in the time domain. The proposed methods are evaluated on synthetic data simulating noise sources emitting from an airfoil inside a wind tunnel
Acoustic signals recorded simultaneously in a reverberant environment can be described as sums of di...
Sparsity-based blind source separation (BSS) algorithms in the short time-frequency (TF) domain have...
In this paper, the problem of blind separation of underdetermined noisy mixtures of audio sources is...
International audienceThe characterization of acoustic sources is of great interest in many industri...
International audienceActive research is ongoing to improve the design of different patterns of airc...
International audienceNear-field aeroacoustic imaging has been the focus of great attentions of rese...
Abstract—Sound source localization and separation from a mix-ture of sounds are essential functions ...
We consider the Gaussian framework for reverberant audio source separation, where the sources are mo...
International audienceWind turbine noise is often annoying for humans living in close proximity to a...
International audienceWe consider the task of under-determined reverberant audio source separation. ...
This paper incorporates available prior knowledge of the source waveforms into the Bayesian approach...
Recently improved deconvolution methods using sparse reg-ularization achieve high spatial resolution...
International audienceRecently improved deconvolution methods using sparse regularization achieve hi...
International audienceAcoustic imaging is an advanced technique for acoustic source localization and...
Acoustic signals recorded simultaneously in a reverberant environment can be described as sums of di...
Sparsity-based blind source separation (BSS) algorithms in the short time-frequency (TF) domain have...
In this paper, the problem of blind separation of underdetermined noisy mixtures of audio sources is...
International audienceThe characterization of acoustic sources is of great interest in many industri...
International audienceActive research is ongoing to improve the design of different patterns of airc...
International audienceNear-field aeroacoustic imaging has been the focus of great attentions of rese...
Abstract—Sound source localization and separation from a mix-ture of sounds are essential functions ...
We consider the Gaussian framework for reverberant audio source separation, where the sources are mo...
International audienceWind turbine noise is often annoying for humans living in close proximity to a...
International audienceWe consider the task of under-determined reverberant audio source separation. ...
This paper incorporates available prior knowledge of the source waveforms into the Bayesian approach...
Recently improved deconvolution methods using sparse reg-ularization achieve high spatial resolution...
International audienceRecently improved deconvolution methods using sparse regularization achieve hi...
International audienceAcoustic imaging is an advanced technique for acoustic source localization and...
Acoustic signals recorded simultaneously in a reverberant environment can be described as sums of di...
Sparsity-based blind source separation (BSS) algorithms in the short time-frequency (TF) domain have...
In this paper, the problem of blind separation of underdetermined noisy mixtures of audio sources is...