An established model for sound energy decay functions (EDFs) is the superposition of multiple exponentials and a noise term. This work proposes a neural-network-based approach for estimating the model parameters from EDFs. The network is trained on synthetic EDFs and evaluated on two large datasets of over 20 000 EDF measurements conducted in various acoustic environments. The evaluation shows that the proposed neural network architecture robustly estimates the model parameters from large datasets of measured EDFs while being lightweight and computationally efficient. An implementation of the proposed neural network is publicly available.Peer reviewe
PhDIn this thesis, we consider the analysis of music and environmental audio recordings with neural...
The project is an exploration of the field of Artificial Intelligence, especially Artificial Neural ...
In the past years, the usage of neural networks in speech processing has increased significantly. Th...
As is well known, the prediction of environmental noises is essential in the field of noise evaluati...
The Helmholtz equation has been used for modeling the sound pressure field under a harmonic load. Co...
Applications of neural network algorithms in rock physics have developed rapidly developed, mainly d...
Human perception of sound arises from the transmission of action-potentials (APs) through a neural n...
The “time-varying loudness” (TVL) model of Glasberg and Moore calculates “instantaneous loudness” ev...
Quantitative room acoustics over a century has accumulated a knowledge base centred around objective...
In this thesis we have analysed the behaviour of a physics informed neural network and it’s competen...
Artificial neural networks are computational systems made up of simple processing units that have a ...
The spectral envelope is mainly determined by the shape of vocal tract and it is generally represent...
This master’s thesis deals with the theory of reverberation and ways of artificially simulating reve...
Under consideration is condition monitoring of thin-walled structures, which suffer fatigue failures...
© 2020 IEEE. A growing need for on-device machine learning has led to an increased interest in light...
PhDIn this thesis, we consider the analysis of music and environmental audio recordings with neural...
The project is an exploration of the field of Artificial Intelligence, especially Artificial Neural ...
In the past years, the usage of neural networks in speech processing has increased significantly. Th...
As is well known, the prediction of environmental noises is essential in the field of noise evaluati...
The Helmholtz equation has been used for modeling the sound pressure field under a harmonic load. Co...
Applications of neural network algorithms in rock physics have developed rapidly developed, mainly d...
Human perception of sound arises from the transmission of action-potentials (APs) through a neural n...
The “time-varying loudness” (TVL) model of Glasberg and Moore calculates “instantaneous loudness” ev...
Quantitative room acoustics over a century has accumulated a knowledge base centred around objective...
In this thesis we have analysed the behaviour of a physics informed neural network and it’s competen...
Artificial neural networks are computational systems made up of simple processing units that have a ...
The spectral envelope is mainly determined by the shape of vocal tract and it is generally represent...
This master’s thesis deals with the theory of reverberation and ways of artificially simulating reve...
Under consideration is condition monitoring of thin-walled structures, which suffer fatigue failures...
© 2020 IEEE. A growing need for on-device machine learning has led to an increased interest in light...
PhDIn this thesis, we consider the analysis of music and environmental audio recordings with neural...
The project is an exploration of the field of Artificial Intelligence, especially Artificial Neural ...
In the past years, the usage of neural networks in speech processing has increased significantly. Th...