AR-vector using CMS for robust text independent speaker verification

C. B. D. Lima, Dirceu G. da Silva, A. Alcaim, J. A. Apolinário
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引用次数: 2

Abstract

This paper presents the performance of the AR-vector with cepstral mean subtraction (CMS) used to compensate the distortions caused by distinct telephone channels. The speaker recognition performance obtained with the use of CMS is compared with a system without compensation. With 60 s of speech signal used for training and 30 s used for testing, the error rate without channel normalization is around 2.82% against the 1.65% achieved with CMS. For 10 s testing time, the error rate dropped from 5.40% to 3.80% when using CMS. For the lowest testing time (3 s), the error rate of the AR-vector is close to 19% regardless of whether or not the normalization technique is used. Although there is a clear improvement in performance when using CMS, it is not of major significance. This leads to the conclusion that the AR-vector classification system is somewhat robust to channel distortion, especially as the testing time decreases.
ar向量使用CMS鲁棒文本独立说话人验证
本文介绍了用倒谱平均减法(CMS)补偿不同电话信道造成的失真的ar向量的性能。将使用CMS的说话人识别性能与无补偿的系统进行了比较。60秒的语音信号用于训练,30秒用于测试,没有信道归一化的错误率约为2.82%,而CMS的错误率为1.65%。在10 s的测试时间内,使用CMS时的错误率从5.40%下降到3.80%。在最低测试时间(3 s)下,无论是否使用归一化技术,ar向量的错误率都接近19%。虽然在使用CMS时性能有明显的提高,但并不具有重大意义。由此得出结论,ar向量分类系统对信道失真具有一定的鲁棒性,特别是随着测试时间的减少。
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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