基于混合残差块时延神经网络的说话人识别

Zhor Benhafid, S. Selouani, M. S. Yakoub, A. Amrouche
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引用次数: 1

摘要

当前的说话人识别系统要么基于时延神经网络(TDNN) x向量,要么基于嵌入说话人表示的ResNet。两种架构都有各自的优势,本文旨在从它们突出的互补特点中获益。与文献中已经提出的相反,我们研究了仅使用一个名为ResBlock的残余神经网络块对x向量的影响,而不是传统系统中使用的几个块。在x向量的TDNN帧级层集成了四个ResBlock变体。获得的混合One-ResBlock-TDNN架构使用野外扬声器(SITW)和复杂环境设置中模糊的声音(Voices)评估集进行评估。实验评估表明,与传统的x向量编码器相比,所有提出的混合One-ResBlock-TDNN变体在SITW和VOiCES标准的数据集上都实现了显着的精度提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Residual Block Time-Delay Neural Network Embeddings for Speaker Recognition
Current speaker recognition systems are based ei-ther on time-delay neural network (TDNN) x-vectors or ResNet embedding speaker representations. Both architectures have their advantages and this paper aims to benefit from their prominent and complementary features. In contrast to what has been already proposed in the literature, we investigate the impact of using only one residual neural network block named ResBlock on x-vectors instead of the several blocks used in conventional sys-tems. Four ResBlock variants are integrated at the TDNN frame-level layer of x-vectors. The obtained hybrid One-ResBlock-TDNN architectures are evaluated using Speaker In The Wild (SITW) and Voices Obscured in Complex Environmental Settings (VOiCES) evaluation sets. The experimental assessment reveals that compared to conventional x-vectors' encoder, a noticeable accuracy improvement of all proposed hybrid One-ResBlock-TDNN variants has been achieved on both SITW and VOiCES standards' datasets.
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