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Robust speaker verification in reverberant conditions using estimated acoustic parameters — A maximum likelihood estimation and training on the fly approach

机译:使用估计的声学参数在混响条件下进行可靠的说话人验证-最大似然估计和动态训练

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Speaker recognition has been developed into a relatively mature state over the past few decades through continuous research and development work. Existing methods typically use the robust features extracted from noise and reverberation free speech signals, and therefore can achieve high recognition accuracy only in idealised conditions. Excessive reverberation as often occurs in many real world applications is known to compromise recognition performance. In this paper, a maximum likelihood estimation algorithm is proposed for blind-estimate reverberation time from speech signals submitted for verification. The estimates are used to choose matched acoustic impulse response or transfer function for the including in the retraining or fine tuning of the pattern recognition model on the fly. The training on the fly approach alleviates the detrimental impact of reverberation on authentication accuracy. Experimental results have shown significant improvement in system performance in terms of reduced equal error rate and detection error trade-off. This paper discusses the rationale, details the algorithm. And discusses the potential and limitations of this new method.
机译:在过去的几十年中,通过不断的研究和开发工作,说话人的识别能力已发展为一个相对成熟的状态。现有方法通常使用从无噪声和无混响的语音信号中提取的鲁棒特征,因此仅在理想条件下才能实现较高的识别精度。众所周知,在许多现实应用中经常发生的过度混响会损害识别性能。本文提出了一种最大似然估计算法,用于从提交验证的语音信号中盲估计混响时间。估计用于选择匹配的声脉冲响应或传递函数,以包括在飞行过程中对模式识别模型的重新训练或精细调整。动态训练方法减轻了混响对身份验证准确性的不利影响。实验结果表明,在降低相等错误率和降低检测错误权衡方面,系统性能得到了显着改善。本文讨论了基本原理,详细介绍了该算法。并讨论了这种新方法的潜力和局限性。

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