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Compensating additive noise and CS-CELP distortion in speech recognition using stochastic weighted Viterbi algorithm

机译:使用随机加权维特比算法补偿语音识别中的加性噪声​​和CS-CELP失真

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摘要

A solution to the problem of speech recognition with signals corrupted by additive noise and CS-CELP coders is presented. The additive noise and the coding distortion are cancelled according to the following scheme: first, the pdf of the clean coded-decoded speech is estimated with an additive noise model; secondly, the pdf of the clean uncoded signal is also estimated with a coding distortion model; finally, the hidden Markov model is compensated using the expected value of observation pdf in the context of the stochastic weighted Viterbi algorithm.
机译:提出了一种解决语音识别问题的方法,该信号具有被加性噪声和CS-CELP编码器破坏的信号。根据以下方案消除加性噪声和编码失真:首先,用加性噪声模型估计干净编码解码语音的pdf。其次,还利用编码失真模型来估计干净的未编码信号的pdf。最后,在随机加权维特比算法的背景下,使用观测值pdf的期望值对隐马尔可夫模型进行补偿。

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