Diffusion-based generative models have greatly impacted the speech processing field in recent years, exhibiting high speech naturalness and spawning a new research direction. Their application in real-time communication is, however, still lagging behind due to their computation-heavy nature involving multiple calls of large DNNs. Here, we present Stream$.$FM, a frame-causal flow-based generative model with an algorithmic latency of 32 milliseconds (ms) and a total latency of 48 ms, paving the way for generative speech processing in real-time communication. We propose a buffered streaming inference scheme and an optimized DNN architecture, show how learned few-step numerical solvers can boost output quality at a fixed compute budget, explore model weight compression to find favorable points along a compute/quality tradeoff, and contribute a model variant with 24 ms total latency for the speech enhancement task. Our work looks beyond theoretical latencies, showing that high-quality streaming generative speech processing can be realized on consumer GPUs available today. Stream$.$FM can solve a variety of speech processing tasks in a streaming fashion: speech enhancement, dereverberation, codec post-filtering, bandwidth extension, STFT phase retrieval, and Mel vocoding. As we verify through comprehensive evaluations and a MUSHRA listening test, Stream$.$FM establishes a state-of-the-art for generative streaming speech restoration, exhibits only a reasonable reduction in quality compared to a non-streaming variant, and outperforms our recent work (Diffusion Buffer) on generative streaming speech enhancement while operating at a lower latency.
翻译:近年来,基于扩散的生成模型对语音处理领域产生了重大影响,展现出极高的语音自然度并催生了新的研究方向。然而,由于这类模型计算密集,需要多次调用大型深度神经网络,其在实时通信中的应用仍显滞后。本文提出 Stream$.$FM,一种帧因果的基于流的生成模型,其算法延迟为 32 毫秒,总延迟为 48 毫秒,为实时通信中的生成式语音处理开辟了道路。我们提出了一种缓冲流式推理方案和优化的深度神经网络架构,展示了在固定计算预算下,学习的多步数值求解器如何提升输出质量,探索了模型权重压缩以在计算/质量权衡曲线上寻找有利点,并贡献了一个总延迟为 24 毫秒的模型变体用于语音增强任务。我们的工作超越了理论延迟的考量,证明了高质量的流式生成式语音处理可以在当今可用的消费级 GPU 上实现。Stream$.$FM 能以流式方式解决多种语音处理任务:语音增强、去混响、编解码器后滤波、带宽扩展、短时傅里叶变换相位恢复以及梅尔声码器合成。正如我们通过全面评估和 MUSHRA 听力测试所验证的,Stream$.$FM 为生成式流式语音修复确立了新的技术标杆,与非流式变体相比仅存在合理的质量下降,并且在更低的延迟下,其性能优于我们近期在生成式流式语音增强方面的工作(Diffusion Buffer)。