Lossy audio codecs compress (and decompress) digital audio streams by removing information that tends to be inaudible in human perception. Under high compression rates, such codecs may introduce a variety of impairments in the audio signal. Many works have tackled the problem of audio enhancement and compression artifact removal using deep-learning techniques. However, only a few works tackle the restoration of heavily compressed audio signals in the musical domain. In such a scenario, there is no unique solution for the restoration of the original signal. Therefore, in this study, we test a stochastic generator of a Generative Adversarial Network (GAN) architecture for this task. Such a stochastic generator, conditioned on highly compresse...
Deep neural networks (DNNs) continue to demonstrate superior generalization performance in an increa...
Audio bandwidth extension aims to expand the spectrum of narrow-band audio signals. Although this to...
Gaps, dropouts and short clips of corrupted audio are a common problem and particularly annoying whe...
Lossy audio codecs compress (and decompress) digital audio streams by removing information that tend...
Engineers have pushed the boundaries of audio compression and designed numerous lossy audio compress...
The high frequency components of the audio signal are often truncated during the encoding processing...
We propose an audio-to-audio generative model that learns to denoise old music recordings. Our model...
Several issues can seriously degrade the quality of digital audio, such as packet loss on IP-based n...
At present, state-of-the-art deep learning music generation systems require a lot time and hardware ...
With increasing amounts of music being digitally transferred from production to distribution, automa...
In this study, we investigate the usage of generative adversarial networks for modelling a collectio...
High audio data compression can be achieved by removing irrelevant signal information that is not de...
This thesis reports various attempts at applying generative deep neural networks to audio for the ta...
This file was last viewed in Adobe Acrobat Pro.Training neural networks require sizeable datasets fo...
While generative adversarial networks (GANs) have been widely used in research on audio generation, ...
Deep neural networks (DNNs) continue to demonstrate superior generalization performance in an increa...
Audio bandwidth extension aims to expand the spectrum of narrow-band audio signals. Although this to...
Gaps, dropouts and short clips of corrupted audio are a common problem and particularly annoying whe...
Lossy audio codecs compress (and decompress) digital audio streams by removing information that tend...
Engineers have pushed the boundaries of audio compression and designed numerous lossy audio compress...
The high frequency components of the audio signal are often truncated during the encoding processing...
We propose an audio-to-audio generative model that learns to denoise old music recordings. Our model...
Several issues can seriously degrade the quality of digital audio, such as packet loss on IP-based n...
At present, state-of-the-art deep learning music generation systems require a lot time and hardware ...
With increasing amounts of music being digitally transferred from production to distribution, automa...
In this study, we investigate the usage of generative adversarial networks for modelling a collectio...
High audio data compression can be achieved by removing irrelevant signal information that is not de...
This thesis reports various attempts at applying generative deep neural networks to audio for the ta...
This file was last viewed in Adobe Acrobat Pro.Training neural networks require sizeable datasets fo...
While generative adversarial networks (GANs) have been widely used in research on audio generation, ...
Deep neural networks (DNNs) continue to demonstrate superior generalization performance in an increa...
Audio bandwidth extension aims to expand the spectrum of narrow-band audio signals. Although this to...
Gaps, dropouts and short clips of corrupted audio are a common problem and particularly annoying whe...