Clarity and intelligiblity are important aspects of speech, especially in a time of misinformation and mistrust. The breakthrough in generative models for audio files has brought massive improvements for speech enhancement. Google’s WaveNet architecture has been modified for noise reduction in a model called WaveNet denoising and has proven to be state-of-the-art. Another competitor on the market would be the Speech Enhancement Generative Adversarial Network (SEGAN) which adapts the GAN architecture into applications on speech. While most older models focus on feature extraction and spectrogram analysis, these two models attempt to skip those steps and become end-to-end models completely. While end-to-end is good, data preprocessing is stil...
This work focuses on single-word speech recognition, where the end goal is to accurately recognize a...
Speech enhancement improves recorded voice utterances to eliminate noise that might be impeding thei...
Generative probabilistic and neural models of the speech signal are shown to be effective in speech ...
Clarity and intelligiblity are important aspects of speech, especially in a time of misinformation a...
Modeling humans’ speech is a challenging task that originally required a coalition between phonetici...
The ability to communicate is fundamental to form a relationship, and it is anecessity for a well-fu...
Hvem har ikke vært i en samtale forvrengt av bakgrunnslyd som trafikk eller vind? En algoritme som k...
Listening in noise is a challenging problem that affects the hearing capability of not only normal h...
This master thesis describes the implementation and evaluation of a promising approach to speech enh...
Denne rapporten beskrier et forskningsprosjekt som hadde som mål å utforske metoder til å redusere b...
In this paper, we suggest a new parallel, non-causal and shallow waveform domain architecture for sp...
This paper proposes a Deep Learning (DL) based Wiener filter estimator for speech enhancement in the...
Speech synthesis is a technology that increasingly influences our daily lives, in the form of smart ...
The thesis aimed to investigate the effects of unintended bias in artificial intelligence has on soc...
The field of speech recognition has during the last decade left the re- search stage and found its w...
This work focuses on single-word speech recognition, where the end goal is to accurately recognize a...
Speech enhancement improves recorded voice utterances to eliminate noise that might be impeding thei...
Generative probabilistic and neural models of the speech signal are shown to be effective in speech ...
Clarity and intelligiblity are important aspects of speech, especially in a time of misinformation a...
Modeling humans’ speech is a challenging task that originally required a coalition between phonetici...
The ability to communicate is fundamental to form a relationship, and it is anecessity for a well-fu...
Hvem har ikke vært i en samtale forvrengt av bakgrunnslyd som trafikk eller vind? En algoritme som k...
Listening in noise is a challenging problem that affects the hearing capability of not only normal h...
This master thesis describes the implementation and evaluation of a promising approach to speech enh...
Denne rapporten beskrier et forskningsprosjekt som hadde som mål å utforske metoder til å redusere b...
In this paper, we suggest a new parallel, non-causal and shallow waveform domain architecture for sp...
This paper proposes a Deep Learning (DL) based Wiener filter estimator for speech enhancement in the...
Speech synthesis is a technology that increasingly influences our daily lives, in the form of smart ...
The thesis aimed to investigate the effects of unintended bias in artificial intelligence has on soc...
The field of speech recognition has during the last decade left the re- search stage and found its w...
This work focuses on single-word speech recognition, where the end goal is to accurately recognize a...
Speech enhancement improves recorded voice utterances to eliminate noise that might be impeding thei...
Generative probabilistic and neural models of the speech signal are shown to be effective in speech ...