English

Deep Representation Decomposition for Rate-Invariant Speaker Verification

Audio and Speech Processing 2022-05-31 v1

Abstract

While promising performance for speaker verification has been achieved by deep speaker embeddings, the advantage would reduce in the case of speaking-style variability. Speaking rate mismatch is often observed in practical speaker verification systems, which may actually degrade the system performance. To reduce intra-class discrepancy caused by speaking rate, we propose a deep representation decomposition approach with adversarial learning to learn speaking rate-invariant speaker embeddings. Specifically, adopting an attention block, we decompose the original embedding into an identity-related component and a rate-related component through multi-task training. Additionally, to reduce the latent relationship between the two decomposed components, we further propose a cosine mapping block to train the parameters adversarially to minimize the cosine similarity between the two decomposed components. As a result, identity-related features become robust to speaking rate and then are used for verification. Experiments are conducted on VoxCeleb1 data and HI-MIA data to demonstrate the effectiveness of our proposed approach.

Keywords

Cite

@article{arxiv.2205.14294,
  title  = {Deep Representation Decomposition for Rate-Invariant Speaker Verification},
  author = {Fuchuan Tong and Siqi Zheng and Haodong Zhou and Xingjia Xie and Qingyang Hong and Lin Li},
  journal= {arXiv preprint arXiv:2205.14294},
  year   = {2022}
}

Comments

Accepted by Odyssey 2022

R2 v1 2026-06-24T11:31:35.926Z