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Enhancement and recognition of noisy speech within an autoregressive hidden Markov model framework using noise estimates from the noisy signal

机译:使用自噪声信号的噪声估计,在自回归隐马尔可夫模型框架内增强和识别噪声语音

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This paper describes a new algorithm to enhance and recognise noisy speech when only the noisy signal is available. The system uses autoregressive hidden Markov models (HMMs) to model the clean speech and noise and combines these to form a model for the noisy speech. The probability framework developed is then used to reestimate the noise models from the corrupted speech waveform and the process is repeated. Enhancement is performed using the Wiener filters formed from the final clean speech models and noise estimates. Results are presented for additive stationary Gaussian and coloured noise.
机译:本文介绍了一种新的算法,用于在只有噪声信号可用时增强和识别噪声语音。该系统使用自回归隐马尔可夫模型(HMM)对干净的语音和噪声进行建模,然后将它们组合起来以形成嘈杂语音的模型。然后使用建立的概率框架从损坏的语音波形中重新估计噪声模型,然后重复该过程。使用由最终干净语音模型和噪声估计形成的维纳滤波器执行增强。给出了加性平稳高斯噪声和彩色噪声的结果。

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