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首页> 外文期刊>The Journal of the Acoustical Society of America >Robust speaker identification via fusion of subglottal resonances and cepstral features
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Robust speaker identification via fusion of subglottal resonances and cepstral features

机译:通过融合脱墨型共振和抗痉挛特征强大的扬声器识别

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摘要

This letter investigates the use of subglottal resonances (SGRs) for noise-robust speaker identification (SID). It is motivated by the speaker specificity and stationarity of subglottal acoustics, and the development of noise-robust SGR estimation algorithms which are reliable at low signal-to-noise ratios for large datasets. A two-stage framework is proposed which combines the SGRs with different cepstral features. The cepstral features are used in the first stage to reduce the number of target speakers for a test utterance, and then SGRs are used as complementary second-stage features to conduct identification. Experiments with the TIMIT and NIST 2008 databases show that SGRs, when used in conjunction with power-normalized cepstral coefficients and linear prediction cepstral coefficients, can improve the performance significantly (2%-6% absolute accuracy improvement) across all noise conditions in mismatched situations. (C) 2017 Acoustical Society of America
机译:这封信调查了用于噪声稳健扬声器识别(SID)的子凝块共振(SGRS)的使用。 它是由副凝集声学的扬声器特异性和实用性的动机,以及在大型数据集的低信噪比下可靠的噪声鲁棒SGR估计算法的发展。 提出了一种两级框架,其将SGRS与不同的倒谱特征结合起来。 倒谱特征在第一阶段中使用以减少测试话语的目标扬声器的数量,然后使用SGRS作为互补的第二阶段特征来进行识别。 与Timit和NIST 2008数据库的实验表明,当与功率归一化抗搏酸系数和线性预测谱系数结合使用时,SGRS可以在错配的情况下的所有噪声条件下显着提高性能(绝对精度改善2%-6%) 。 (c)2017年声学社会

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