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Using vector Taylor series with noise clustering for speech recognition in non-stationary noisy environments

Using vector Taylor series with noise clustering for speech recognition in non-stationary noisy environments
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摘要 The performance of automatic speech recognizer degrades seriously when there are mismatches between the training and testing conditions. Vector Taylor Series (VTS) approach has been used to compensate mismatches caused by additive noise and convolutive channel distortion in the cepstral domain, in this paper, the conventional VTS is extended by incorporating noise clustering into its EM iteration procedure, improving its compensation effectiveness under non-stationary noisy environments. Recognition experiments under babble and exhibition noisy environments demonstrate that the new algorithm achieves 35% average error rate reduction compared with the conventional VTS.
出处 《High Technology Letters》 EI CAS 2006年第1期18-23,共6页 高技术通讯(英文版)
关键词 speech recognition ROBUSTNESS model adaptation CLUSTERING 泰勒级数 语音识别 聚类 噪音
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