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Noise compensation methods for hidden Markov model speech recognition in adverse environments

机译:不利环境下隐马尔可夫模型语音识别的噪声补偿方法

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摘要

Several noise compensation schemes for speech recognition in impulsive and nonimpulsive noise are considered. The noise compensation schemes are spectral subtraction, HMM-based Wiener (1949) filters, noise-adaptive HMMs, and a front-end impulsive noise removal. The use of the cepstral-time matrix as an improved speech feature set is explored, and the noise compensation methods are extended for use with cepstral-time features. Experimental evaluations, on a spoken digit database, in the presence of ear noise, helicopter noise, and impulsive noise, demonstrate that the noise compensation methods achieve substantial improvement in recognition across a wide range of signal-to-noise ratios. The results also show that the cepstral-time matrix is more robust than a vector of identical size, which is composed of a combination of cepstral and differential cepstral features.
机译:考虑了用于脉冲和非脉冲噪声中的语音识别的几种噪声补偿方案。噪声补偿方案为频谱减法,基于HMM的Wiener(1949)滤波器,自适应噪声的HMM和前端脉冲式噪声去除。探索了将倒谱时间矩阵用作改进的语音特征集的方法,并扩展了噪声补偿方法以用于倒谱时间特征。在存在耳朵噪声,直升机噪声和脉冲噪声的情况下,对口语数据库进行的实验评估表明,噪声补偿方法在各种信噪比范围内的识别能力均得到了显着改善。结果还表明,倒谱时间矩阵比相同大小的矢量(由倒谱特征和差分倒谱特征的组合组成)更鲁棒。

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