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SoCov: Semi-Orthogonal Parametric Pooling of Covariance Matrix for Speaker Recognition

SoCov: Semi-Orthogonal Parametric Pooling of Covariance Matrix for Speaker Recognition

来源:Arxiv_logoArxiv
英文摘要

In conventional deep speaker embedding frameworks, the pooling layer aggregates all frame-level features over time and computes their mean and standard deviation statistics as inputs to subsequent segment-level layers. Such statistics pooling strategy produces fixed-length representations from variable-length speech segments. However, this method treats different frame-level features equally and discards covariance information. In this paper, we propose the Semi-orthogonal parameter pooling of Covariance matrix (SoCov) method. The SoCov pooling computes the covariance matrix from the self-attentive frame-level features and compresses it into a vector using the semi-orthogonal parametric vectorization, which is then concatenated with the weighted standard deviation vector to form inputs to the segment-level layers. Deep embedding based on SoCov is called ``sc-vector''. The proposed sc-vector is compared to several different baselines on the SRE21 development and evaluation sets. The sc-vector system significantly outperforms the conventional x-vector system, with a relative reduction in EER of 15.5% on SRE21Eval. When using self-attentive deep feature, SoCov helps to reduce EER on SRE21Eval by about 30.9% relatively to the conventional ``mean + standard deviation'' statistics.

Rongjin Li、Weibin Zhang、Dongpeng Chen、Jintao Kang、Xiaofen Xing

10.1109/ICASSP49660.2025.10888890

计算技术、计算机技术

Rongjin Li,Weibin Zhang,Dongpeng Chen,Jintao Kang,Xiaofen Xing.SoCov: Semi-Orthogonal Parametric Pooling of Covariance Matrix for Speaker Recognition[EB/OL].(2025-04-23)[2025-05-18].https://arxiv.org/abs/2504.16441.点此复制

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