In this paper, the long-term learning properties of an artificial neural network model, designed for sound recognition and computational auditory scene analysis in general, are investigated. The model is designed to run for long periods of time (weeks to months) on low-cost hardware, used in a noise monitoring network, and builds upon previous work by the same authors. It consists of three neural layers, connected to each other by feedforward and feedback excitatory connections. It is shown that the different mechanisms that drive auditory attention emerge naturally from the way in which neural activation and intra-layer inhibitory connections are implemented in the model. Training of the artificial neural network is done following the Hebb...
L'homme peut discriminer les caractéristiques acoustiques de bruits Gaussiens. Les mécanismes de la ...
This paper reviews some basic issues and methods involved in using neural networks to respond in a d...
End-to-end speech recognition is the problem of mapping raw audio signal all the way to text. In doi...
In this paper, a human-mimicking model for sound source recognition is presented. It consists of an ...
Auditory attention is an essential property of human hearing. It is responsible for the selection of...
The cerebral cortex has remarkable computational abilities; it is able to solve prob- lems which rem...
The high levels goals of this thesis are to: understand the neural representation of sound, produce ...
PhDIn this thesis, we consider the analysis of music and environmental audio recordings with neural...
The performance for automated speech processing tasks like speech recognition and speech activity de...
Short-term synaptic plasticity is modulated by long-term synaptic changes. There is, however, no ge...
Audio processors whose parameters are modified periodically over time are often referred as time-var...
The human auditory system displays a robust capacity to adapt to sudden changes in background noise,...
Machine Learning applied to Automatic Audio Surveillance has been attracting increasing attention in...
In this paper we investigate the importance of the extent of memory in sequential self attention for...
SummaryHumans are remarkable at rapidly learning regularities through experience from a dynamic envi...
L'homme peut discriminer les caractéristiques acoustiques de bruits Gaussiens. Les mécanismes de la ...
This paper reviews some basic issues and methods involved in using neural networks to respond in a d...
End-to-end speech recognition is the problem of mapping raw audio signal all the way to text. In doi...
In this paper, a human-mimicking model for sound source recognition is presented. It consists of an ...
Auditory attention is an essential property of human hearing. It is responsible for the selection of...
The cerebral cortex has remarkable computational abilities; it is able to solve prob- lems which rem...
The high levels goals of this thesis are to: understand the neural representation of sound, produce ...
PhDIn this thesis, we consider the analysis of music and environmental audio recordings with neural...
The performance for automated speech processing tasks like speech recognition and speech activity de...
Short-term synaptic plasticity is modulated by long-term synaptic changes. There is, however, no ge...
Audio processors whose parameters are modified periodically over time are often referred as time-var...
The human auditory system displays a robust capacity to adapt to sudden changes in background noise,...
Machine Learning applied to Automatic Audio Surveillance has been attracting increasing attention in...
In this paper we investigate the importance of the extent of memory in sequential self attention for...
SummaryHumans are remarkable at rapidly learning regularities through experience from a dynamic envi...
L'homme peut discriminer les caractéristiques acoustiques de bruits Gaussiens. Les mécanismes de la ...
This paper reviews some basic issues and methods involved in using neural networks to respond in a d...
End-to-end speech recognition is the problem of mapping raw audio signal all the way to text. In doi...