噪声鲁棒语音识别的变分视角

R. V. Dalen, M. Gales
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引用次数: 4

摘要

模型补偿方法在抗噪声语音识别中表现出良好的性能。预测线性变换可以近似这些方法,以平衡计算复杂度和补偿精度。本文从变分的角度考察了这两种方法。在组件级别使用匹配对近似可以产生许多标准形式的模型补偿和预测线性变换。然而,可以通过在状态水平上使用变分近似来获得更严格的界。基于模型和预测的线性变换方案都可以在该框架中实现。初步结果表明,由状态变分方法得到的更严格的约束比标准方案具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A variational perspective on noise-robust speech recognition
Model compensation methods for noise-robust speech recognition have shown good performance. Predictive linear transformations can approximate these methods to balance computational complexity and compensation accuracy. This paper examines both of these approaches from a variational perspective. Using a matched-pair approximation at the component level yields a number of standard forms of model compensation and predictive linear transformations. However, a tighter bound can be obtained by using variational approximations at the state level. Both model-based and predictive linear transform schemes can be implemented in this framework. Preliminary results show that the tighter bound obtained from the state-level variational approach can yield improved performance over standard schemes.
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