Several issues can seriously degrade the quality of digital audio, such as packet loss on IP-based networks or damaged storage media, impacting intelligibility and user experience. This paper presents a generative approach, aiming to repair lost fragments in audio streams. Inspired by the well-established image-to-image translation ability of generative adversarial networks (GANs) and based on the bin2bin framework, previously introduced for speech inpainting, we propose an enhanced framework which performs the translation task from CQT magnitude spectrograms of music signal frames with lost regions, to reliable spectrograms. The goal is to effectively reconstruct missing audio segments, enabling a seamless listening experience for the audi...
Over recent years generative models utilizing deep neural networks have demonstrated outstanding cap...
We present a fast and high-fidelity method for music generation, based on specified f0 and loudness,...
With increasing amounts of music being digitally transferred from production to distribution, automa...
Packet loss is a major cause of voice quality degradation in VoIP transmissions with serious impact ...
Packet loss is a major cause of voice quality degradation in VoIP transmissions with serious impact ...
Lossy audio codecs compress (and decompress) digital audio streams by removing information that tend...
Lossy audio codecs compress (and decompress) digital audio streams by removing information that tend...
Gaps, dropouts and short clips of corrupted audio are a common problem and particularly annoying whe...
We propose the audio inpainting framework that recovers portions of audio data distorted due to impa...
The paper examines the usage of Convolutional Bidirectional Recurrent Neural Network (CBRNN) for a p...
© 2019 Association for Computing Machinery. Generative audio models based on neural networks have le...
Generative Adversarial Networks (GANs) currently achieve the state-of-the-art sound synthesis qualit...
International audienceWe propose a framework called audio inpainting for the general problem of esti...
In this contribution, we present a method to compensate for long duration data gaps in audio signals...
Audio bandwidth extension aims to expand the spectrum of narrow-band audio signals. Although this to...
Over recent years generative models utilizing deep neural networks have demonstrated outstanding cap...
We present a fast and high-fidelity method for music generation, based on specified f0 and loudness,...
With increasing amounts of music being digitally transferred from production to distribution, automa...
Packet loss is a major cause of voice quality degradation in VoIP transmissions with serious impact ...
Packet loss is a major cause of voice quality degradation in VoIP transmissions with serious impact ...
Lossy audio codecs compress (and decompress) digital audio streams by removing information that tend...
Lossy audio codecs compress (and decompress) digital audio streams by removing information that tend...
Gaps, dropouts and short clips of corrupted audio are a common problem and particularly annoying whe...
We propose the audio inpainting framework that recovers portions of audio data distorted due to impa...
The paper examines the usage of Convolutional Bidirectional Recurrent Neural Network (CBRNN) for a p...
© 2019 Association for Computing Machinery. Generative audio models based on neural networks have le...
Generative Adversarial Networks (GANs) currently achieve the state-of-the-art sound synthesis qualit...
International audienceWe propose a framework called audio inpainting for the general problem of esti...
In this contribution, we present a method to compensate for long duration data gaps in audio signals...
Audio bandwidth extension aims to expand the spectrum of narrow-band audio signals. Although this to...
Over recent years generative models utilizing deep neural networks have demonstrated outstanding cap...
We present a fast and high-fidelity method for music generation, based on specified f0 and loudness,...
With increasing amounts of music being digitally transferred from production to distribution, automa...