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The IBM Speaker Recognition System: Recent Advances and Error Analysis

机译:IBM扬声器识别系统:最近的进步和错误分析

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We present the recent advances along with an error analysis of the IBM speaker recognition system for conversational speech. Some of the key advancements that contribute to our system include: a nearest-neighbor discriminant analysis (NDA) approach (as opposed to LDA) for intersession variability compensation in the i-vector space, the application of speaker and channel-adapted features derived from an automatic speech recognition (ASR) system for speaker recognition, and the use of a DNN acoustic model with a very large number of output units (~10k senones) to compute the frame-level soft alignments required in the i-vector estimation process. We evaluate these techniques on the NIST 2010 SRE extended core conditions (C1-C9), as well as the 10sec-10sec condition. To our knowledge, results achieved by our system represent the best performances published to date on these conditions. For example, on the extended tel-tel condition (C5) the system achieves an EER of 0.59%. To garner further understanding of the remaining errors (on C5), we examine the recordings associated with the low scoring target trials, where various issues are identified for the problematic recordings/trials. Interestingly, it is observed that correcting the pathological recordings not only improves the scores for the target trials but also for the non-target trials.
机译:我们提出了最近的进展以及对会话语音IBM扬声器识别系统的错误分析。有助于我们的系统的一些关键进步包括:用于I - 矢量空间中的Interssion可变性补偿的最近邻居判别分析(NDA)方法(与LDA),扬声器和沟道适应的功能的应用用于扬声器识别的自动语音识别(ASR)系统,以及使用具有大量输出单元(〜10K Senones)的DNN声学模型来计算I - 矢量估计过程所需的帧级软对准。我们在NIST 2010 SRE延长核心条件(C1-C9)以及10SEC-10SEC条件下评估这些技术。为我们的知识,我们的系统实现的结果代表了迄今为止这些条件发布的最佳表现。例如,在扩展的Tel-Tel条件(C5)上,系统达到0.59%的eer。为了进一步了解剩余错误(在C5),我们检查与低得分目标试验相关的录音,其中针对有问题的记录/试验确定了各种问题。有趣的是,观察到纠正病理记录不仅改善了目标试验的分数,而且还可用于非目标试验。

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