Diffusion models have recently shown promising results for difficult enhancement tasks such as the conditional and unconditional restoration of natural images and audio signals. In this work, we explore the possibility of leveraging a recently proposed advanced iterative diffusion model, namely cold diffusion, to recover clean speech signals from noisy signals. The unique mathematical properties of the sampling process from cold diffusion could be utilized to restore high-quality samples from arbitrary degradations. Based on these properties, we propose an improved training algorithm and objective to help the model generalize better during the sampling process. We verify our proposed framework by investigating two model architectures. Experimental results on benchmark speech enhancement dataset VoiceBank-DEMAND demonstrate the strong performance of the proposed approach compared to representative discriminative models and diffusion-based enhancement models.
翻译:扩散模型近期在复杂增强任务中如条件和无条件恢复自然图像和音频信号中展现了令人鼓舞的结果。本研究探索了利用最近提出的高级迭代扩散模型(即寒冷扩散)从嘈杂信号中恢复干净语音信号的可能性。采样过程的独特数学特性可以用于从任意退化中恢复高质量样本。基于这些特性,我们提出了一种改进的训练算法和目标,以帮助模型在采样过程中更好地推广。我们通过研究两种模型架构来验证所提出的框架。在基准语音增强数据集VoiceBank-DEMAND上的实验结果表明,所提出的方法相对于代表性的判别模型和基于扩散的增强模型具有很强的性能。