Effective Combination of Multiple Evidences for I-vector Based Limited Data Speaker Verification

K. Dutta, D. Pati
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Abstract

The performance of automatic speaker verification (ASV) system always depends upon the amount of information (speech sample) used in the process. ASV system's performance suffers when the information provided to the system is limited, even though the methodology is remain same. The issue of limited information can be resolved to some extend by using multiple evidences. In general, score level combination scheme is widely used to combine the effect of multiple evidences, where a decision is made based on the independent opinions of the evidences. We conjecture that the collectively contributed decisions may be more effective and propose a new combination scheme for limited data speaker verification task. In the proposed work, we have used mel frequency cepstral coefficient (MFCC) and residual MFCC (RMFCC) as representation of the vocal tract and excitation source information. The experiments are conducted with well-known NIST-2003 speaker recognition evaluation (SRE) database. The score level combination scheme provide a relative improvement of 14.93% in extremely limited data condition (≃ 2 sec), on an average 15.57% for all limited data conditions. In comparison, the proposed scheme provides 28.40% and 29.02%, respectively. Thus proposed method provides a relative gain of 13.47% for extremely limited data condition and on an average 13.42% for other limited data conditions. These experimental results signify the importance of using proposed combination scheme over the popular score level combination scheme.
基于i向量的有限数据说话人验证的多证据有效组合
自动说话人验证(ASV)系统的性能取决于过程中使用的信息量(语音样本)。当提供给系统的信息有限时,即使方法保持不变,ASV系统的性能也会受到影响。利用多重证据可以在一定程度上解决信息有限的问题。一般情况下,广泛采用评分水平组合方案来综合多个证据的效果,根据证据的独立意见做出决策。我们推测集体贡献决策可能更有效,并提出了一种新的组合方案用于有限数据说话人验证任务。在本文的工作中,我们使用mel频率倒谱系数(MFCC)和残差MFCC (RMFCC)作为声道和激励源信息的表示。实验采用著名的NIST-2003说话人识别评价数据库进行。分数水平组合方案在极有限的数据条件下提供14.93%的相对改善,在所有有限的数据条件下平均提供15.57%的相对改善。相比之下,建议方案分别提供28.40%和29.02%。因此,该方法在极有限数据条件下的相对增益为13.47%,在其他有限数据条件下的平均增益为13.42%。这些实验结果表明,与目前流行的分数水平组合方案相比,采用本文提出的组合方案更为重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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