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Approximated Parallel Model Combination for efficient noise-robust speech recognition

机译:近似并行模型组合,可实现有效的鲁棒语音识别

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Parallel Model Combination (PMC) and Vector Taylor Series (VTS) are two model-based approaches for noise-robust speech recognition. The latter is more popular because of its simple compensation formulae for both the static and dynamic parameters. Furthermore, this VTS compensation formulation can be easily extended to noise adaptive training where the parameters of the underlying pseudo-clean speech and distortion models can be optimized. PMC lacks the above benefits because of its nonlinear variance compensation formula. In this paper, the Approximated PMC (APMC) method is proposed where linearized PMC variance compensation is used. The same approximation has also been applied to Trajectory-based APMC (TAPMC) to achieve a four-time computational saving over the Trajectory-based PMC (TPMC). The dynamic parameter compensation and noise re-estimation formulae for APMC are also derived. Experimental results on AURORA 4 show that APMC and TAPMC consistently outperformed the standard VTS and Trajectory-based VTS (TVTS) by 6.3% and 5.3% relative respectively.
机译:并行模型组合(PMC)和矢量泰勒级数(VTS)是用于噪声鲁棒语音识别的两种基于模型的方法。后者因其针对静态和动态参数的简单补偿公式而更加受欢迎。此外,该VTS补偿公式可以轻松地扩展到噪声自适应训练,其中可以优化底层伪干净语音和失真模型的参数。由于其非线性方差补偿公式,PMC缺乏上述优势。在本文中,提出了使用线性化PMC方差补偿的近似PMC(APMC)方法。相同的近似值也已应用于基于轨迹的APMC(TAPMC),以实现基于轨迹的PMC(TPMC)的四次计算节省。推导了APMC的动态参数补偿和噪声重估计公式。在AURORA 4上的实验结果表明,APMC和TAPMC相对于标准VTS和基于轨迹的VTS(TVTS)始终分别比其高出6.3%和5.3%。

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