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A HARMONIC-MODEL-BASED FRONT END FOR ROBUST SPEECH RECOGNITION

机译:基于谐波模型的鲁棒语音识别前端

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摘要

Speech recognition accuracy degrades significantly when the speech has been corrupted by noise, especially when the system has been trained on clean speech. Many compensation algorithms have been developed which require reliable online noise estimates or a priori knowledge of the noise. In situations where such estimates or knowledge is difficult to obtain, these methods fail. We present a new robustness algorithm which avoids these problems by making no assumptions about the corrupting noise. Instead, we exploit properties inherent to the speech signal itself to denoise the recognition features. In this method, speech is decomposed into harmonic and noise-like components, which are then processed independently and recombined. By processing noise-corrupted speech in this manner we achieve significant improvements in recognition accuracy on the Aurora 2 task.
机译:当语音被噪声破坏时,尤其是当系统以纯净语音训练时,语音识别精度会大大降低。已经开发了许多补偿算法,这些算法需要可靠的在线噪声估计或噪声的先验知识。在难以获得此类估计或知识的情况下,这些方法会失败。我们提出了一种新的鲁棒性算法,该算法通过不对噪声进行假设就避免了这些问题。取而代之的是,我们利用语音信号本身固有的属性去噪识别特征。在这种方法中,语音被分解为谐波和类噪声成分,然后分别进行处理和重组。通过以这种方式处理受噪声破坏的语音,我们在Aurora 2任务上的识别准确性得到了显着提高。

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