一种基于s函数的倒频谱域缺失数据加权方法

Pei Yi, Yubo Ge
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引用次数: 3

摘要

缺失数据技术(MDT)在语音识别中的应用已被证明可以提高语音识别的性能。为了将MDT应用于倒谱域,提出了一种基于sigmoid函数的倒谱特征可靠性加权计算方法,并引入了加权距离算法。通过对隐马尔可夫模型(HMM)中高斯方差的逐帧补偿,推导出可靠度可以减少训练良好的模型与错误语音之间的不匹配。使用Aurora2数据库的实验评估表明,数字错误率明显降低。该方法的主要优点是系统实现简单,计算成本低,易于插入其他鲁棒识别算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A weighted approach of missing data technique in cepstra domain based on S-function
The application of Missing Data Technique (MDT) has shown to improve the performance of speech recognition. To apply MDT to cepstral domain, this paper presents a weighted approach to compute the reliability of cepstral feature based on sigmoid function and introduces a weighted distance algorithm. It is deduced that the reliability compensates the Gaussian variance in hidden Markov model (HMM) frame by frame to reduce the mismatch between clean-trained model and corrupted speech. Experimental evaluation using the Aurora2 database demonstrates a distinct digit error rate reduction. The main advantages of the approach are simple system implementation, low computation cost and easy to plug into other robust recognition algorithm.
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