Publications

カンファレンス (国際) Non-parallel High-Quality Audio Super Resolution with Domain Adaptation and Resampling CycleGANs

Reo Yoneyama (Nagoya University), Ryuichi Yamamoto, Kentaro Tachibana

2023 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP 2023)

2023.6.4

Neural audio super-resolution models are typically trained on low- and high-resolution audio signal pairs. Although these methods achieve highly accurate super-resolution if the acoustic characteristics of the input data are similar to those of the training data, challenges remain: the models suffer from quality degradation for out-of-domain data, and paired data are required for training. To address these problems, we propose Dual-CycleGAN, a high-quality audio super-resolution method that can utilize unpaired data based on two connected cycle consistent generative adversarial networks (CycleGAN). Our method decomposes the super-resolution method into domain adaptation and resampling processes to handle acoustic mismatch in the unpaired low- and high-resolution signals. The two processes are then jointly optimized within the CycleGAN framework. Experimental results verify that the proposed method significantly outperforms conventional methods when paired data are not available. Code and audio samples are available from https://chomeyama.github.io/DualCycleGAN-Demo/.

Paper : Non-parallel High-Quality Audio Super Resolution with Domain Adaptation and Resampling CycleGANs新しいタブまたはウィンドウで開く (外部サイト)