Using Context Specific Generative Adversarial Networks for Audio Data Completion

Marina Maayah, Abdulaziz Al-Ali, Abdelhak Belhi
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引用次数: 0

Abstract

Audio quality plays an essential role in several applications ranging from music to voice conversations. Sound information is subject to quality loss caused by reasons such as intermittent network connections, or storage corruption. Recent approaches resorted to using GANs for audio reconstruction due to their successful deployment in visual applications. However, audio datasets often include sounds from different contexts which increase the complexity of the patterns to be learned, leading to sub-optimal quality reconstruction. We propose a novel audio completion pipeline that clusters audio based on similarity of features extracted by a pre-trained CNN model and then trains a dedicated specialized GAN for each context separately. The proposed technique is compared with the traditional method of training one general GAN in completing 200ms missing segments of 1-second audio samples. Experimental results on a public benchmark dataset show that using specialized GANs led to a clear improvement in the completion quality as measured by a higher PSNR and a lower MSE. Qualitative evaluation also supported these results.
使用上下文特定的生成对抗网络音频数据完成
音频质量在从音乐到语音对话的几个应用程序中起着至关重要的作用。由于网络连接时断时续或存储损坏等原因,声音信息可能会出现质量损失。由于gan在视觉应用中的成功部署,最近的方法是使用gan进行音频重建。然而,音频数据集通常包含来自不同上下文的声音,这增加了要学习的模式的复杂性,导致次优质量重建。我们提出了一种新的音频补全管道,该管道基于预训练CNN模型提取的特征相似性对音频进行聚类,然后分别为每个上下文训练专用的GAN。将该技术与传统的训练一个通用GAN的方法进行了比较,以完成1秒音频样本的200ms缺失片段。在公共基准数据集上的实验结果表明,使用专用gan可以通过更高的PSNR和更低的MSE来衡量完成质量的明显改善。定性评价也支持这些结果。
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