基于ResNet和tdnn的说话人识别系统中噪声鲁棒性和噪声补偿的综合探索

Mohammad MohammadAmini, D. Matrouf, J. Bonastre, Sandipana Dowerah, R. Serizel, D. Jouvet
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引用次数: 0

摘要

本文对ResNet和TDNN说话人识别系统的噪声鲁棒性和噪声补偿进行了全面的研究。首先探讨了TDNN和ResNet在存在噪声、混响和两种失真时的鲁棒性。实验结果表明,在所有情况下,ResNet系统都比TDNN具有更强的鲁棒性。之后,对从两个系统中提取的x向量进行去噪自动编码器(DAE)的噪声补偿任务。我们探索了两种场景:1)用人工数据补偿人工噪声,2)用人工数据补偿真实噪声。第二种情况是最理想的情况,因为它使噪音补偿负担得起,而没有真正的数据来训练去噪技术。实验结果表明,在第一种情况下,噪声补偿对TDNN有显著的改善,而在Resnet中这种改善不显著。在第二种情况下,我们在TDNN和ResNet系统中实现了15%的EER比voice Eval挑战的改进。在大多数情况下,无补偿的ResNet的性能优于有噪声补偿的TDNN。
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A Comprehensive Exploration of Noise Robustness and Noise Compensation in ResNet and TDNN-based Speaker Recognition Systems
In this paper, a comprehensive exploration of noise robustness and noise compensation of ResNet and TDNN speaker recognition systems is presented. Firstly the robustness of the TDNN and ResNet in the presence of noise, reverberation, and both distortions is explored. Our experimental results show that in all cases the ResNet system is more robust than TDNN. After that, a noise compensation task is done with denoising autoen-coder (DAE) over the x-vectors extracted from both systems. We explored two scenarios: 1) compensation of artificial noise with artificial data, 2) compensation of real noise with artificial data. The second case is the most desired scenario, because it makes noise compensation affordable without having real data to train denoising techniques. The experimental results show that in the first scenario noise compensation gives significant improvement with TDNN while this improvement in Resnet is not significant. In the second scenario, we achieved 15% improvement of EER over VoiCes Eval challenge in both TDNN and ResNet systems. In most cases the performance of ResNet without compensation is superior to TDNN with noise compensation.
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