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Coupling identification and reconstruction of missing features for noise-robust automatic speech recognition

机译:耦合识别和重构噪声稳健自动语音识别的缺失特征

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The standard missing feature imputation approach to noiserobust-automatic speech recognition requires that a single foreground/background segmentation mask is identified prior to reconstruction. This paper presents a novel imputation approach which more closely couples the identification and reconstruction of missing features by using a probabilistic framework based on the speech fragment decoding technique. Using fragment decoding, the most joint-likely state sequence and segmentation hypothesis is identified with which the missing data region is imputed. Crucially,.however, imputation can exploit the speech state sequence recovered by the fragment decoding. Further, using N-best decodings allows the clean spectrogram to be estimated as a weighted combination of reconstructions which provides some allowance for uncertainty in the estimates. Experiments on the PASCAL CHiME Challenge task show that system performance is highly dependent on the complexity of the speech models used for segmentation and imputation, and by exploiting the temporal constraint of speech the system significantly outperforms those that ignore the constraint.
机译:标准缺失的特征载旋识别方法是Noiserobust-自动语音识别要求在重建之前识别单个前景/背景分割掩模。本文提出了一种新的归纳方法,其更紧密地耦合通过使用基于语音片段解码技术的概率框架来耦合缺失特征的识别和重建。使用片段解码,识别出缺失的数据区域被识别最多关节的状态序列和分段假设。至关重要的是,但是,估算可以利用由片段解码恢复的语音状态序列。此外,使用n个最佳解码允许估计清洁谱图作为重新制构的加权组合,其在估计中提供了一些不确定性的允许。 Pascal Chime挑战任务的实验表明,系统性能高度依赖于用于分割和归纳的语音模型的复杂性,并且通过利用系统的时间约束,系统显着优于忽略约束的语音约束。

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