We present a novel way of conditioning a pretrained denoising diffusion speech model to produce speech in the voice of a novel person unseen during training. The method requires a short (~3 seconds) sample from the target person, and generation is steered at inference time, without any training steps. At the heart of the method lies a sampling process that combines the estimation of the denoising model with a low-pass version of the new speaker's sample. The objective and subjective evaluations show that our sampling method can generate a voice similar to that of the target speaker in terms of frequency, with an accuracy comparable to state-of-the-art methods, and without training.
翻译:我们提出一种新的方法,对预先排除的传播语言模式进行限定,以在培训期间看不见的新人的声音中产生语言,这种方法需要目标人的短(~3秒)样本,代代在推论时间进行,而没有任何培训步骤。方法的核心是将脱去语言模式的估算与新演讲者样本的低端版本结合起来的抽样过程。客观和主观评价表明,从频率上看,我们的抽样方法可以产生与目标演讲者相似的声音,准确性与最新方法相当,而且没有培训。