High-Resolution Speech Restoration with Latent Diffusion Model

Tushar Dhyani, Florian Lux, Michele Mancusi, Giorgio Fabbro, Fritz Hohl, Ngoc Thang Vu
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Abstract

Traditional speech enhancement methods often oversimplify the task of restoration by focusing on a single type of distortion. Generative models that handle multiple distortions frequently struggle with phone reconstruction and high-frequency harmonics, leading to breathing and gasping artifacts that reduce the intelligibility of reconstructed speech. These models are also computationally demanding, and many solutions are restricted to producing outputs in the wide-band frequency range, which limits their suitability for professional applications. To address these challenges, we propose Hi-ResLDM, a novel generative model based on latent diffusion designed to remove multiple distortions and restore speech recordings to studio quality, sampled at 48kHz. We benchmark Hi-ResLDM against state-of-the-art methods that leverage GAN and Conditional Flow Matching (CFM) components, demonstrating superior performance in regenerating high-frequency-band details. Hi-ResLDM not only excels in non-instrusive metrics but is also consistently preferred in human evaluation and performs competitively on intrusive evaluations, making it ideal for high-resolution speech restoration.
利用潜在扩散模型进行高分辨率语音修复
传统的语音增强方法往往只关注单一类型的失真,从而过度简化了修复任务。处理多种失真的生成模型经常在电话重建和高频谐波方面遇到困难,导致呼吸和喘息伪音,降低了重建语音的可懂度。这些模型的计算要求也很高,而且许多解决方案仅限于在宽带频率范围内产生输出,这限制了它们在专业应用中的适用性。为了应对这些挑战,我们提出了 Hi-ResLDM 模型,这是一种基于潜在扩散的高级生成模型,旨在消除多重失真并将语音录音恢复到录音棚质量,采样频率为 48kHz。我们将 Hi-ResLDM 与利用 GAN 和条件流匹配 (CFM) 组件的最先进方法进行了比较,结果表明,Hi-ResLDM 在再生高频段细节方面表现出色。Hi-ResLDM 不仅在非侵入性指标方面表现出色,而且在人类评估中一直受到青睐,在侵入性评估中表现也很有竞争力,是高分辨率语音修复的理想选择。
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