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A sparsity based preprocessing for noise robust speech recognition

机译:基于稀疏性的抗噪语音预处理

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We show a method to sparsify the speech input that improves the robustness of an automatic speech recognizer. The proposed scheme is added to the system as a preprocessing module prior to the acoustic feature extraction. The preprocessing module passes the input speech signal through a linear predictive (LP) analysis filter and enforces sparsity in the LP residue domain. The sparsified prediction residue finally is filtered to generate the speech signal for computing a sequence of conventional feature vectors used in automatic speech recognition (ASR). Using standard feature vectors, our experiments show that sparsification in LP residue domain improves robustness in ASR performance.
机译:我们展示了一种稀疏语音输入的方法,可以提高自动语音识别器的鲁棒性。所提出的方案在声音特征提取之前作为预处理模块添加到系统中。预处理模块将输入语音信号通过线性预测(LP)分析滤波器,并在LP残余域中强制执行稀疏性。最后,对稀疏的预测残差进行滤波以生成语音信号,以计算自动语音识别(ASR)中使用的一系列常规特征向量。使用标准特征向量,我们的实验表明,LP残基域的稀疏化提高了ASR性能的鲁棒性。

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