In this paper, we studied the effect of the optimization algorithm of weight coefficients on the performance of the CNN(Convolutional Neural Network) noise attenuator. This system improves the performance of the noise attenuation by a deep learning algorithm using the neural network adaptive predictive filter instead of using the existing adaptive filter. Speech is estimated from a single input speech signal containing noise using 64-neuron, 16-filter CNN filters and an error back propagation algorithm. This is to use the quasi-periodic nature of the voiced sound section of the voice signal. In this study, to verify the performance of the noise attenuator for the optimization, a test program using the Keras library was written and training ...
The project is an exploration of the field of Artificial Intelligence, especially Artificial Neural ...
First we present a proof that convolutional neural networks (CNNs) with max-norm regularization, max...
The scope of this project covered the objective of filtering the background noise in speech signal u...
In modern days automatic speech recognition (ASR) systems rise in popularity especially in smartphon...
Today personal audio devices are usually used during telephone connections. Mobility and facility ta...
In this paper, a fast and effective method of parameter optimization for noise estimation is propose...
International audienceWe consider the problem of explaining the robustness of neural networks used t...
This paper proposes a Deep Learning (DL) based Wiener filter estimator for speech enhancement in the...
Speech enhancement is a critical part in automatic speech recognition systems. Recently with the dev...
To address the problems in the traditional speech signal noise elimination methods, such as the resi...
Abstract The performance of the existing speech enhancement algorithms is not ideal in low signal-to...
This dissertation will investigate various methods of noise reduction in speech signals using back p...
Recent researches in the field of automatic speaker recognition have shown that methods based on d...
The speech signal that is received in real-time has background noise and reverberations, which have ...
Speech enhancement, which aims to recover the clean speech of the corrupted signal, plays an importa...
The project is an exploration of the field of Artificial Intelligence, especially Artificial Neural ...
First we present a proof that convolutional neural networks (CNNs) with max-norm regularization, max...
The scope of this project covered the objective of filtering the background noise in speech signal u...
In modern days automatic speech recognition (ASR) systems rise in popularity especially in smartphon...
Today personal audio devices are usually used during telephone connections. Mobility and facility ta...
In this paper, a fast and effective method of parameter optimization for noise estimation is propose...
International audienceWe consider the problem of explaining the robustness of neural networks used t...
This paper proposes a Deep Learning (DL) based Wiener filter estimator for speech enhancement in the...
Speech enhancement is a critical part in automatic speech recognition systems. Recently with the dev...
To address the problems in the traditional speech signal noise elimination methods, such as the resi...
Abstract The performance of the existing speech enhancement algorithms is not ideal in low signal-to...
This dissertation will investigate various methods of noise reduction in speech signals using back p...
Recent researches in the field of automatic speaker recognition have shown that methods based on d...
The speech signal that is received in real-time has background noise and reverberations, which have ...
Speech enhancement, which aims to recover the clean speech of the corrupted signal, plays an importa...
The project is an exploration of the field of Artificial Intelligence, especially Artificial Neural ...
First we present a proof that convolutional neural networks (CNNs) with max-norm regularization, max...
The scope of this project covered the objective of filtering the background noise in speech signal u...