Audio bandwidth extension aims to expand the spectrum of narrow-band audio signals. Although this topic has been broadly studied during recent years, the particular problem of extending the bandwidth of historical music recordings remains an open challenge. This paper proposes BEHM-GAN, a model based on generative adversarial networks, as a practical solution to this problem. The proposed method works with the complex spectrogram representation of audio and, thanks to a dedicated regularization strategy, can effectively extend the bandwidth of out-of-distribution real historical recordings. The BEHM-GAN is designed to be applied as a second step after denoising the recording to suppress any additive disturbances, such as clicks and background noise. We train and evaluate the method using solo piano classical music. The proposed method outperforms the compared baselines in both objective and subjective experiments. The results of a formal blind listening test show that BEHM-GAN significantly increases the perceptual sound quality in early-20th-century gramophone recordings. For several items, there is a substantial improvement in the mean opinion score after enhancing historical recordings with the proposed bandwidth-extension algorithm. This study represents a relevant step toward data-driven music restoration in real-world scenarios.
翻译:虽然近年来广泛研究了这个专题,但扩大历史音乐录音带宽的特殊问题仍是一个公开的挑战。本文提议BEHM-GAN,这是一个基于基因对抗网络的模型,是解决这一问题的一个实际办法。拟议方法与音频的复杂光谱代表法一起工作,由于一项专门的正规化战略,可以有效地扩大分配外真实历史录音的带宽。BEHM-GAN设计在取消录音以抑制任何添加性扰动(例如点击和背景噪音)之后作为第二步应用。我们用独奏钢琴古典音乐训练和评价方法。拟议方法在客观和主观试验中都优于比较基线。正式的盲听测试结果表明,BEHM-GAN大大提高了20世纪早期古典录音的感知音质量。对于几个项目来说,在用拟议的带宽扩展算法加强历史记录以抑制任何添加性扰动之后,其平均意见评分将大幅提高。本研究显示,在现实世界中,数据驱动的音乐恢复过程将走向相关的一步。