Wav2sv: End-to-end Speaker Embeddings Learning from Raw Waveforms based on Metric Learning for Speaker Verification

Zhiqing Chen, Yifan Pan, Haoran Zhang, Yuesheng Zhu
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Abstract

With the application of deep learning in the field of speaker recognition, the performance of speaker recognition systems has been greatly improved. However, most current work still relies on handcrafted features, existing raw waveform-based systems fail to utilize the multi-scale feature and multi-level information efficiently. Besides, the speaker embedding generated by speaker identification is used to complete speaker verification through similarity discrimination, resulting in a domain mismatch problem. To address these problems, we propose an end-to-end system called Wav2sv, which uses a stack of strided convolution layers as a feature encoder, SE-Res2Blocks and dense connection between each frame layer as the frame aggregator; and obtain the speaker embedding with a metric learning objective. This new end-to-end system can automatically learn the most suitable speaker embedding from raw waveform based on metric learning for speaker verification. Our simulation results on VoxCeleb1 indicate that the proposed approach achieves an EER of 4.75%, which is 18% superior to the Wav2spk baseline. Our work demonstrates the great potential of extracting speaker embeddings from raw waveforms.
Wav2sv:基于度量学习的原始波形的端到端说话人嵌入学习
随着深度学习在说话人识别领域的应用,说话人识别系统的性能得到了很大的提高。然而,目前大多数工作仍然依赖于手工制作的特征,现有的基于原始波形的系统无法有效地利用多尺度特征和多层次信息。此外,利用说话人识别生成的说话人嵌入,通过相似判别完成说话人的验证,产生了域不匹配问题。为了解决这些问题,我们提出了一种称为Wav2sv的端到端系统,它使用一堆跨行卷积层作为特征编码器,SE-Res2Blocks和每个帧层之间的密集连接作为帧聚合器;并获得具有度量学习目标的说话人嵌入。这种基于度量学习的端到端系统可以从原始波形中自动学习最合适的说话人嵌入,用于说话人验证。我们在VoxCeleb1上的仿真结果表明,该方法的EER为4.75%,比Wav2spk基线高18%。我们的工作证明了从原始波形中提取说话人嵌入的巨大潜力。
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