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Efficient VTS Adaptation Using Jacobian Approximation

机译:高效的VTS适应使用雅各拜近似

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By exploiting a model of environmental distortion, model adaptation based on vector Taylor series (VTS) approaches have been shown to significantly improve the robustness of speech recognizers to environmental noise. However, the computational cost of VTS model adaptation (MVTS) methods hinders them from being more widely used. In this paper, we propose to reduce the computational cost of MVTS by replacing the Jacobian matrix used in the vector Taylor series approximation with a diagonal Jacobian matrix (DJVTS). We verify this approximation by showing that the Jacobian matrices are dominated by their diagonal elements and therefore the model distortion introduced by this approximation is very small. DJVTS gives similar accuracy as the standard MVTS method with significant reduction in computational cost. The proposed method also achieves higher accuracy than VTS-based feature enhancement.
机译:通过利用环境失真模型,已经显示了基于矢量泰勒系列(VTS)方法的模型适应,从而显着提高了语音识别器对环境噪声的鲁棒性。然而,VTS模型适应的计算成本(MVTS)方法阻碍了它们更广泛使用。在本文中,我们建议通过用对角线雅可矩阵(DJVT)替换矢量泰勒串近似的雅各比矩阵来降低MVT的计算成本。我们通过表明雅可族矩阵由其对角线元素主导,因此通过该近似引入的模型失真非常小。 DJVTS作为标准MVTS方法提供了类似的准确性,其计算成本显着降低。该方法还实现了比VTS的特征增强更高的精度。

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