Deep learning and Neural Networks strategies have become very popular in the last year as tools for image and data processing. As for acoustics, neural network-based approaches have been typically used to recognize audio patterns or features or to spatially localize a single emitting source like a speaker. More recently, some authors used deep learning to localize multiple-sources exploiting the grid-based approach typical of sound source localization methods or to filter/improve acoustic maps obtained by more traditional techniques like conventional beamforming. This paper wants to propose the use of artificial neural networks (ANNs) for localizing and quantifying multiple sound sources in a grid-less way. The approach uses the microphones...
The following article has been submitted to the special issue on Machine Learning in Acoustics in JA...
With a microphone array, spatial diversity can be exploited to estimate time-frequency masks that ef...
In this article we present a methodology for source localization in reverberant environments from Ge...
Deep learning and Neural Networks strategies have become very popular in the last year as tools for ...
Deep learning and Neural Networks strategies have become very popular in the last year as tools for ...
Deep learning and Neural Networks strategies have become very popular in the last year as tools for ...
Deep learning and Neural Networks strategies have become very popular in the last year as tools for ...
In recent years, efforts are focused on developing an acoustic based autonomous detect and avoidance...
International audienceProtecting sensitive sites from drone threats requires an accurate strategy fo...
International audienceProtecting sensitive sites from drone threats requires an accurate strategy fo...
This paper presents a novel approach for indoor acoustic source localization using microphone arrays...
Localization and quantification of noise sources is an important scientific and industrial problem, ...
International audienceThis article is a survey of deep learning methods for single and multiple soun...
We propose to use neural networks for simultaneous detection and localization of multiple sound sour...
Abstract In order to improve the performance of microphone array-based sound source localization (S...
The following article has been submitted to the special issue on Machine Learning in Acoustics in JA...
With a microphone array, spatial diversity can be exploited to estimate time-frequency masks that ef...
In this article we present a methodology for source localization in reverberant environments from Ge...
Deep learning and Neural Networks strategies have become very popular in the last year as tools for ...
Deep learning and Neural Networks strategies have become very popular in the last year as tools for ...
Deep learning and Neural Networks strategies have become very popular in the last year as tools for ...
Deep learning and Neural Networks strategies have become very popular in the last year as tools for ...
In recent years, efforts are focused on developing an acoustic based autonomous detect and avoidance...
International audienceProtecting sensitive sites from drone threats requires an accurate strategy fo...
International audienceProtecting sensitive sites from drone threats requires an accurate strategy fo...
This paper presents a novel approach for indoor acoustic source localization using microphone arrays...
Localization and quantification of noise sources is an important scientific and industrial problem, ...
International audienceThis article is a survey of deep learning methods for single and multiple soun...
We propose to use neural networks for simultaneous detection and localization of multiple sound sour...
Abstract In order to improve the performance of microphone array-based sound source localization (S...
The following article has been submitted to the special issue on Machine Learning in Acoustics in JA...
With a microphone array, spatial diversity can be exploited to estimate time-frequency masks that ef...
In this article we present a methodology for source localization in reverberant environments from Ge...