Towards improving the performance of speaker recognition systems

Neethu Johnson, Kuruvachan K. George, C. S. Kumar, P. Raj
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引用次数: 3

Abstract

This paper studies the contribution of different phones in speech data towards improving the performance of text/language independent speaker recognition systems. This work is motivated by the fact that the removal of silence segments from the speech data improves the system performance significantly as it does not contain any speaker-specific information. It is also clear from the literature that not all the phones in the speech data contains equal amount of speaker-specific information in it and the performance of the speaker recognition systems depends on this information. In addition to the silence segments, our work empirically finds 18 other diluent phones that has minimum speaker discrimination capability. We propose to use a preprocessing stage that identifies all non-informative set of phones recursively and removes them along with silence segments. Results show that using phones removed preprocessed data in state-of-the-art i-vector system outperforms the baseline i-vector system. We report absolute improvements of 1%, 1%, 2%, 2% and 1% in EER for test set collected through channels of Digital Voice Recorder, Headset, Mobile Phone 1, Mobile Phone 2 and Tablet PC respectively on IITG-MV database.
提高说话人识别系统的性能
本文研究了不同电话语音数据对提高独立于文本/语言的说话人识别系统性能的贡献。这项工作的动机是这样一个事实,即从语音数据中删除沉默段可以显着提高系统性能,因为它不包含任何特定于说话者的信息。从文献中也可以清楚地看出,并非语音数据中的所有电话都包含等量的说话人特定信息,说话人识别系统的性能取决于这些信息。除了静音部分,我们的工作经验发现其他18个稀释手机具有最低的扬声器识别能力。我们建议使用一个预处理阶段,递归地识别所有非信息的电话集,并将它们与沉默段一起删除。结果表明,在最先进的i-vector系统中使用手机删除预处理数据优于基线i-vector系统。在IITG-MV数据库中,通过数字录音机、耳机、手机1、手机2和平板电脑等渠道采集的测试集,我们报告了EER的绝对改善分别为1%、1%、2%、2%和1%。
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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