This paper discusses the application of convolutional neural networks (CNNs) to minimum variance distortionless response localization schemes. We investigate the direction of arrival estimation problems in noisy and reverberant conditions using a uniform linear array (ULA). CNNs are used to process the multichannel data from the ULA and to improve the data fusion scheme, which is performed in the steered response power computation. CNNs improve the incoherent frequency fusion of the narrowband response power by weighting the components, reducing the deleterious effects of those components affected by artifacts due to noise and reverberation. The use of CNNs avoids the necessity of previously encoding the multichannel data into selected acou...
Supervised learning methods are a powerful tool for direction of arrival (DOA) estimation because th...
This paper presents deep learning approach for sound events detection and localization, which is als...
This paper presents a weighted minimum variance distortionless response (WMVDR) algorithm for far-fi...
The steered response power (SRP) methods can be used to build a map of sound direction likelihood. I...
Abstract In order to improve the performance of microphone array-based sound source localization (S...
In this paper, we present a new model for Direction of Arrival (DOA) estimation of sound sources bas...
In this paper, we present a new model for Direction of Arrival (DOA) estimation of sound sources bas...
This paper presents a novel approach for indoor acoustic source localization using microphone arrays...
The following article has been submitted to the special issue on Machine Learning in Acoustics in JA...
In many applications, speech recognition must operate in conditions where there are some distances b...
A weighted minimum variance distortionless response (WMVDR) algorithm for near-field sound localizat...
In many applications, speech recognition must operate in conditions where there are some distances b...
We propose a biologically inspired binaural sound localization system using a deep convolutional neu...
Recent advances in deep learning have enhanced the ability of sound source localization in noise and...
Supervised learning methods are a powerful tool for direction of arrival (DOA) estimation because th...
Supervised learning methods are a powerful tool for direction of arrival (DOA) estimation because th...
This paper presents deep learning approach for sound events detection and localization, which is als...
This paper presents a weighted minimum variance distortionless response (WMVDR) algorithm for far-fi...
The steered response power (SRP) methods can be used to build a map of sound direction likelihood. I...
Abstract In order to improve the performance of microphone array-based sound source localization (S...
In this paper, we present a new model for Direction of Arrival (DOA) estimation of sound sources bas...
In this paper, we present a new model for Direction of Arrival (DOA) estimation of sound sources bas...
This paper presents a novel approach for indoor acoustic source localization using microphone arrays...
The following article has been submitted to the special issue on Machine Learning in Acoustics in JA...
In many applications, speech recognition must operate in conditions where there are some distances b...
A weighted minimum variance distortionless response (WMVDR) algorithm for near-field sound localizat...
In many applications, speech recognition must operate in conditions where there are some distances b...
We propose a biologically inspired binaural sound localization system using a deep convolutional neu...
Recent advances in deep learning have enhanced the ability of sound source localization in noise and...
Supervised learning methods are a powerful tool for direction of arrival (DOA) estimation because th...
Supervised learning methods are a powerful tool for direction of arrival (DOA) estimation because th...
This paper presents deep learning approach for sound events detection and localization, which is als...
This paper presents a weighted minimum variance distortionless response (WMVDR) algorithm for far-fi...