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A Denoising Autoencoder for Speaker Recognition. Results on the MCE 2018 Challenge

机译:用于说话人识别的去噪自动编码器。 MCE 2018挑战赛的结果

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We propose a Denoising Autoencoder (DAE) for speaker recognition, trained to map each individual ivector to the mean of all ivectors belonging to that particular speaker. The aim of this DAE is to compensate for inter-session variability and increase the discriminative power of the ivectors prior to PLDA scoring. We test the proposed approach on the MCE 2018 1st Multi-target speaker detection and identification Challenge Evaluation. This evaluation presents a call-center fraud detection scenario: given a speech segment, detect if it belongs to any of the speakers in a blacklist. We show that our DAE system consistently outperforms the usual LDA + PLDA pipeline, achieving a Top-S EER of 4.33% and Top-1 EER of 6.11% on the evaluation set, which represents a 45.6% error reduction with respect to the baseline system provided by organizers.
机译:我们提出了一种用于说话人识别的去噪自动编码器(DAE),经过训练可以将每个单独的ivector映射到属于该特定说话者的所有ivector的均值。此DAE的目的是补偿会话间的可变性并增加PLDA评分之前ivector的判别能力。我们在MCE 2018第一届多目标说话人检测和识别挑战评估中测试了所提出的方法。此评估提出了呼叫中心欺诈检测方案:给定语音段,检测它是否属于黑名单中的任何说话者。我们表明,我们的DAE系统始终优于常规的LDA + PLDA管道,在评估集上实现了4.33%的Top-S EER和6.11%的Top-1 EER,相对于基准系统而言,降低了45.6%的误差由组织者提供。

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