Master´s thesis in Information and Communication Technology (IKT590), University of Agder, GrimstadThe importance of sound and speech cannot in human life cannot be overstated. Ambient sound informs us about our surroundings and warn us of potential dangers, such as a car approaching from behind. One of the most common modes of communication is speech. However, if it is contaminated with background noise, it may result in data loss. Recent advances in artificial intelligence enable machines to recognize and classify sound patterns, as well as remove complex background noise from contaminated speech. This thesis investigates a method for improving existing background noise classification and denoising solutions. This is accomplished th...
Environmental sound signals are multi-source, heterogeneous, and varying in time. Many systems have ...
U ovome radu, u prvome poglavlju napravljen je kratki uvod na tematiku, opisani su osnovni pojmovi i...
Machine learning has experienced a strong growth in recent years, due to increased dataset sizes and...
The importance of sound and speech cannot in human life cannot be overstated. Ambient sound informs ...
In modern days automatic speech recognition (ASR) systems rise in popularity especially in smartphon...
Thesis (Master's)--University of Washington, 2019Audio signals from real-life hearing devices typica...
This article discusses real–time denoising algorithms for digital audio based on the Wavelet Transfo...
This report is to experiment and compare the different performances of two different deep learning n...
TThis article discusses real-time denoising algorithms for digital audio based on the Wavelet Transf...
Today personal audio devices are usually used during telephone connections. Mobility and facility ta...
The thesis focuses on the use of deep recurrent neural network, architecture Long Short-Term Memory ...
In communication systems and other speech related systems, background noise is a severe problem. The...
The speech signal that is received in real-time has background noise and reverberations, which have ...
This dissertation will investigate various methods of noise reduction in speech signals using back p...
Recent advances in neural-network based generative modeling of speech has shown great potential for...
Environmental sound signals are multi-source, heterogeneous, and varying in time. Many systems have ...
U ovome radu, u prvome poglavlju napravljen je kratki uvod na tematiku, opisani su osnovni pojmovi i...
Machine learning has experienced a strong growth in recent years, due to increased dataset sizes and...
The importance of sound and speech cannot in human life cannot be overstated. Ambient sound informs ...
In modern days automatic speech recognition (ASR) systems rise in popularity especially in smartphon...
Thesis (Master's)--University of Washington, 2019Audio signals from real-life hearing devices typica...
This article discusses real–time denoising algorithms for digital audio based on the Wavelet Transfo...
This report is to experiment and compare the different performances of two different deep learning n...
TThis article discusses real-time denoising algorithms for digital audio based on the Wavelet Transf...
Today personal audio devices are usually used during telephone connections. Mobility and facility ta...
The thesis focuses on the use of deep recurrent neural network, architecture Long Short-Term Memory ...
In communication systems and other speech related systems, background noise is a severe problem. The...
The speech signal that is received in real-time has background noise and reverberations, which have ...
This dissertation will investigate various methods of noise reduction in speech signals using back p...
Recent advances in neural-network based generative modeling of speech has shown great potential for...
Environmental sound signals are multi-source, heterogeneous, and varying in time. Many systems have ...
U ovome radu, u prvome poglavlju napravljen je kratki uvod na tematiku, opisani su osnovni pojmovi i...
Machine learning has experienced a strong growth in recent years, due to increased dataset sizes and...