Speech Enhancement Using Continuous Embeddings of Neural Audio Codec
Journal:
arXiv
Published Date:
Feb 22, 2025
Abstract
Recent advancements in Neural Audio Codec (NAC) models have inspired their
use in various speech processing tasks, including speech enhancement (SE). In
this work, we propose a novel, efficient SE approach by leveraging the
pre-quantization output of a pretrained NAC encoder. Unlike prior NAC-based SE
methods, which process discrete speech tokens using Language Models (LMs), we
perform SE within the continuous embedding space of the pretrained NAC, which
is highly compressed along the time dimension for efficient representation. Our
lightweight SE model, optimized through an embedding-level loss, delivers
results comparable to SE baselines trained on larger datasets, with a
significantly lower real-time factor of 0.005. Additionally, our method
achieves a low GMAC of 3.94, reducing complexity 18-fold compared to Sepformer
in a simulated cloud-based audio transmission environment. This work highlights
a new, efficient NAC-based SE solution, particularly suitable for cloud
applications where NAC is used to compress audio before transmission.
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