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On real time Q-log-based feature normalization for distant speech recognition

机译:基于实时Q日志的特征归一化用于远程语音识别

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The computation of long term mean in feature normalization methods requires information on future frames, and thus makes them inapplicable for real-time implementations. Previously, q-log spectral mean normalization (q-LSMN) as feature normalization method is proposed, and it shows more effective result than conventional normalization methods. However, q-LSMN has not yet been implemented on real time. In this paper, we propose a real time implementation of q-LSMN. In this method, the mean is updated recursively based on only previous frames, hence no future frame information is needed. Experiments on Aurora-5 databases showed that while real time q-LSMN achieved slightly worse performance than non real time q-LSMN as expected, it improved the recognition accuracy up to 54.22% compared to that of non-real time conventional normalization methods such as cepstral mean normalization (CMN) and Log spectral mean normalization (LSMN).
机译:特征归一化方法中长期均值的计算需要有关未来帧的信息,因此使它们不适用于实时实现。以前,提出了q-log光谱均值归一化(q-LSMN)作为特征归一化方法,它显示出比常规归一化方法更有效的结果。但是,q-LSMN尚未实时实现。在本文中,我们提出了q-LSMN的实时实现。在这种方法中,均值仅基于先前的帧进行递归更新,因此不需要将来的帧信息。在Aurora-5数据库上进行的实验表明,尽管实时q-LSMN的性能比预期的非实时q-LSMN稍差,但与非实时常规归一化方法(例如,倒谱均值归一化(CMN)和对数谱均值归一化(LSMN)。

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