首页> 外文会议>IEEE Workshop on Automatic Speech Recognition and Understanding >HIGH-PERFORMANCE HMM ADAPTATION WITH JOINT COMPENSATION OF ADDITIVE AND CONVOLUTIVE DISTORTIONS VIA VECTOR TAYLOR SERIES
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HIGH-PERFORMANCE HMM ADAPTATION WITH JOINT COMPENSATION OF ADDITIVE AND CONVOLUTIVE DISTORTIONS VIA VECTOR TAYLOR SERIES

机译:高性能HMM适应与矢量泰勒系列的添加剂和卷曲扭曲的联合补偿

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In this paper, we present our recent development of a model-domain environment-robust adaptation algorithm, which demonstrates high performance in the standard Aurora 2 speech recognition task. The algorithm consists of two main steps. First, the noise and channel parameters are estimated using a nonlinear environment distortion model in the cepstral domain, the speech recognizer's "feedback" information, and the Vector-Taylor-Series (VTS) linearization technique collectively. Second, the estimated noise and channel parameters are used to adapt the static and dynamic portions of the HMM means and variances. This two-step algorithm enables Joint compensation of both Additive and Convolutive distortions (JAC). In the experimental evaluation using the standard Aurora 2 task, the proposed JAC/VTS algorithm achieves 91.11% accuracy using the clean-trained simple HMM backend as the baseline system for the model adaptation. This represents high recognition performance on this task without discriminative training of the HMM system. Detailed analysis on the experimental results shows that adaptation of the dynamic portion of the HMM mean and variance parameters is critical to the success of our algorithm.
机译:在本文中,我们展示了我们最近的模型 - 域环境稳健适应算法的发展,其展示了标准Aurora 2语音识别任务中的高性能。该算法由两个主要步骤组成。首先,使用谱系统中的非线性环境失真模型,语音识别器的“反馈”信息和载体泰勒系列(VTS)线性化技术估计噪声和信道参数。其次,估计的噪声和信道参数用于调整HMM均值和差异的静态和动态部分。该两步算法可以联合补偿添加剂和卷曲扭曲(Jac)。在使用标准Aurora 2任务的实验评估中,所提出的JAC / VTS算法使用清洁训练的简单HMM后端作为模型适应的基线系统实现了91.11%的精度。这代表了对此任务的高识别性能,而无需对HMM系统的鉴别培训。实验结果的详细分析表明,嗯平均值和方差参数的动态部分的适应对于我们算法的成功至关重要。

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