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Propagation of Statistical Information Through Non-Linear Feature Extractions for Robust Speech Recognition

机译:通过非线性特征提取来传播统计信息,用于强大的语音识别

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Automatic speech recognition systems often rely on statistical noise suppression methods to increase their recognition performance in non-stationary noisy environments. However, even with a good approximation of the noise power spectrum, the estimated clean signal contains residual noise along with artifacts introduced by speech estimation inaccuracies. In this paper, we show that this can be compensated by propagating a measure of the uncertainty of estimation through the feature extraction process and combining it with missing feature techniques directly in the feature domain.
机译:自动语音识别系统通常依赖于统计噪声抑制方法,以提高其在非稳定性嘈杂环境中的识别性能。然而,即使噪声功率频谱的良好近似,估计的清洁信号也包含残留噪声以及由语音估计不准确引入的伪影。在本文中,我们示出了通过通过特征提取过程传播估计的不确定度并将其与直接在特征域中的缺失的特征技术组合来补偿这一点。

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