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Noise robust speaker verification via the fusion of SNR-independent and SNR-dependent PLDA

机译:通过融合独立于SNR和依赖于SNR的PLDA的抗噪声扬声器验证

摘要

While i-vectors with probabilistic linear discriminant analysis (PLDA) can achieve state-of-the-art performance in speaker verification, the mismatch caused by acoustic noise remains a key factor affecting system performance. In this paper, a fusion system that combines a multi-condition signal-to-noise ratio (SNR)-independent PLDA model and a mixture of SNR-dependent PLDA models is proposed to make speaker verification systems more noise robust. First, the whole range of SNR that a verification system is expected to operate is divided into several narrow ranges. Then, a set of SNR-dependent PLDA models, one for each narrow SNR range, are trained. During verification, the SNR of the test utterance is used to determine which of the SNR-dependent PLDA models is used for scoring. To further enhance performance, the SNR-dependent and SNR-independent models are fused using linear and logistic regression fusion. The performance of the fusion system and the SNR-dependent system is evaluated on the NIST 2012 speaker recognition evaluation for both noisy and clean conditions. Results show that a mixture of SNR-dependent PLDA models perform better in both clean and noisy conditions. It was also found that the fusion system is more robust than the conventional i-vector/PLDA systems under noisy conditions.
机译:尽管带有概率线性判别分析(PLDA)的i矢量可以在说话者验证中达到最先进的性能,但是由声噪声引起的失配仍然是影响系统性能的关键因素。本文提出了一种融合系统,该系统结合了独立于多条件信噪比(SNR)的PLDA模型和混合了依赖于SNR的PLDA模型,以使说话者验证系统的噪声更加鲁棒。首先,将验证系统期望运行的整个SNR范围分为几个狭窄范围。然后,训练一组针对SNR的PLDA模型,每个窄SNR范围一个。在验证期间,将使用测试话语的SNR来确定将哪个SNR相关的PLDA模型用于评分。为了进一步提高性能,使用线性和逻辑回归融合来融合SNR相关模型和SNR独立模型。在NIST 2012说话人识别评估中,针对嘈杂和干净的环境,评估了融合系统和SNR依赖系统的性能。结果表明,与SNR有关的PLDA模型混合在一起在干净和嘈杂的条件下均表现更好。还发现在噪声条件下,融合系统比常规的i-vector / PLDA系统更强大。

著录项

  • 作者

    Pang X; Mak MW;

  • 作者单位
  • 年度 2015
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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